The present invention relates to the measurement of human biometric data generated by physical activity using a unique universal motion exercising sensor module using a 6-DOF sensor of the mems type developed by JAWKU, LLC, a Delaware Company.
Prior art devices for measuring physical exertion parameters exist, but have several drawbacks concerning the amount, type and quality of the useful data generated. For example, the range of forms of tracking and performance are limited. Sensors such as the NIKE FUEL BAND®, FITBIT ONE®, FITBIT FLEX®, JAWBONE UP®, and 24 HOUR FITNESS's BODYBUGG® are limited as essentially glorified accelerometers that only tracks steps taken, distance traveled, calories burned, and in some cases sleep activity. Sports activity and health sensors include wearable body sensors such as wrist watch sensors, as for example the Suunto Ambit2 S White, developed by a Finnish company for skiers, ear mounted sensors, and sensors incorporated in body clothing such as socks. Several bra sensors have also been developed such as the Tennis Performance Bra incorporating a miCoach heart rate sensor to track heart rate and calorie burn. The Basis fitness tracker bracelet works on a combination of a 3-axis accelerometer, a perspiration monitor and a skin temperature sensor to track beats per minute (bpm) heart rate patterns, steps taken and calories burned. Microsoft Inc. has recently developed a nerve bra sensor used to detect a change in nervous condition which may signal the onset of urges (such as binge eating).
The improved sensing technology of the JAWKU™ sensor module tracks steps taken and calories burned like the prior art sensors above referred to and more. The universal 6-DOF sensor module interfaces with proprietary algorithms and preselected human motion parameters which enable an exerciser to be able to track human motions. This sensor module, for example, enables the user to run a sprint indoors or outdoors and then compare the user's time to that of top athletes who did the same sprint distance to see how the user compares, or compare the user's time to that achieved by the user's friends. The sensor module enables real time analysis and upload of biometric data during a user's activity or workout via pairing with the low energy Bluetooth system present in smartphones.
Further, all the biometric data can be saved on a built-in internal memory chip. This chip incorporates a compiler cpu made integral with the universal motion exercising sensor module (also referred to as the sensor module). This module is mounted on the human body by a wrist band, the combination module and wrist band referred to as a FITBANDT™ sensor wrist/ankle band. The user has the option to upload the data collected by the compiler using the Bluetooth capabilities of a smartphone or using a mini-USB cable link connected with the user's computer. This allows users the option to have their smartphone with them while they are exercising or the freedom to only have the sensor module with the internal memory chip with them during their training session. The chip data can then be uploaded at a time of the user's choosing. The sensor module wirelessly communicates with the Bluetooth® enabled smartphone which has an enabling app for either viewing the exercise data in a refined form on the smartphone's display screen or uploading the data to the user's home computer or to a remote cloud based computer system of a social fitness website the user has joined.
Optionally, the user may use the smartphone with the above referred to app installed in conjunction with a miniature wearable eyeglass viewing display (not shown) such as the one recently developed by Google, Inc. and marketed as the Google Glass® headset. The user can thus free up the smartphone display screen for other inputs while seeing the biometric data on the eyeglass miniature screen.
The sensor module gathers an immense amount of information and detailed feedback, as the user not only can wear the module during the user's workout but also all day to track things such as calories burned, steps taken, distance traveled, and activity level. The sensor module allows the user to track:
Reps (each individual rep during exercise)
Sets (each set that is done per exercise)
40 yard dash (10 yrd, 20 yrd, 30 yrd, 40 yrd increments)
100 yard dash
Vertical jump
Horizontal/broad jump
Short/20 yard shuttle
RAST (Repeated Anaerobic Sprint Test)
Calories burned
Steps taken
Distance traveled
Provides instant and real time analyses with the application
Velocity
Acceleration.
With the combination heart rate monitor/sensor module mounted by a chest strap or other suitable attaching devices well known in the art, the JAWKU FITBAND product can track heart rate/beat for a cardio assessment in addition to collecting pace and cadence data generated by the running activity of the user.
Various advantages, aspects and novel features of the present invention, as well as details of illustrated embodiments thereof, will be more fully understood from the following description and drawings.
Further features and advantages of the present invention will be apparent upon consideration of the following detailed description of the present invention, taken in conjunction with the following drawings, in which like reference numerals refer to like parts, and in which:
The invention relates to a state of the art sensor that is universal and has three human body location wearable applications. A tremendous advantage in economy is gained though the design of a universal motion exercising sensor module which is interchangeable to facilitate the sensor module being able to be easily and quickly taken out of each apparatus forming the each apparatus forming the above referred to human body location wearable applications and placed into the next for various forms of tracking exercise performance. This allows for the customization of holding devices for the sensor module and bands worn on the body or exercise equipment.
A wrist Fitband™ 1 is shown in the
A second embodiment of a wrist Fitband™ 40 is depicted in
An embodiment of a chest Fitband™ 60 is depicted in
Alternatively, the wrist universal motion exercising sensor module 3 may be used with a heart sensor 64 with both mounted on a chest strap 65. As shown in by the double arrow in
Alternatively, in another chest strap embodiment (not shown), the wrist universal sensor module 53 may also be used with a heart sensor mounted on a chest strap. The universal module 53 is placed into and removed from a rear loading cavity similar to the
Optionally, it may be desirable to mount the heart sensor 64 on a separate chest strap. Module 53 has a mini-USB port and a recharging port the same as module 3 but must be removed from the wrist or chest band to permit access to the ports.
A special embodiment of the sensor module cradle is depicted in
The universal motion exercising sensor module 3 has a shell formed of light weight but durable plastic. The dimensions of the module 3 are compact in form and approximately 1 and 3/16 inch square by 5/16 inch high. As shown in
This interchangeability provides advantages of simplicity, design aesthetics and economical cost to the user by reduction in the number of sensor movement modules needed by the user for different exercises. Interchangeability allows ease of replacement of damaged sensor modules. The magnetic cradle 10 is also sized to receive the sensor module 53 of the
The exercising data detected by the motion sensor modules 3, 53, and 63 are automatically transmitted to a Bluetooth® enabled smart device, such as a smartphone having an app for refining the data and wirelessly transmit the refined data to a user's fitness website where automatic analysis of sensor data provides the user with ready access and digital storage of the data in easily understood form. Pairing a heart monitor with the invention's sensor module permits the user to self-track their fitness biometric data and goal exercise progress.
Components of the 6-DOF sensor inertial measurement unit common to sensor modules 3, 53 and 63 are depicted in
Other components include an integrated internal memory chip 25 of the FIFO type for motion biofeedback or motion logging. Integral with the memory chip is a compiler 24 used to control sensor data reception and to transmit the same in coded form suitable for the wireless internet interface of the smart device 26. Examples of the smart device 26 are Bluetooth enabled personal computers and Bluetooth enabled smartphones.
Integral with the microprocessor 23 is a task scheduler circuit 27 which among other tasks controls the order of data packet transmissions and timing of sleep mode to power down unused sensors. An embedded temperature sensor and circuit 28 is provided for calibration accuracy. The circuit 28 has an on-chip oscillator with as an example +/−1% variation over the operating temperature range and calibration circuitry.
A Bluetooth transceiver radio antenna and circuit 29 is integrated within the module for wireless transfer of data to a Bluetooth enabled smartphone. Bluetooth™ protocol 4.0 circuitry 30 is provided with BLE power consumption. A higher Bluetooth® protocol may also be used depending on the compiler coding.
As an alternative to a Bluetooth® protocol, other communication standards for wireless data transfer may be used such as 4G, WiFi and Zigbee®. Those skilled in the art will readily understand the need for other basic components such as those disclosed in U.S. Pat. No. 7,219,033, to Kolen, which disclosure is hereby incorporated in its entirety. Firmware 32 protects vibration shocks to the module and is an example of such other basic components.
The wrist Fitband™ 1 with mounted sensor module 3 tracks reps, sets, steps taken, velocity, acceleration, and other biometric motion data. Calories burned are accurately calculated knowing the above sensed biometric data. An ankle/leg Fitband™ which uses the universal sensor module 3 with a larger band size than the wrist band 4 is secured to a correct tightness when placed on the ankle/leg for measuring motions for various pushing, pulling, running and jumping activities. For comfort reasons, a silicone material is preferred for the band material.
In the embodiment of
One alternative method to having the user go through a later step of entering (on the smartphone) the weight size information is to employ predictive type algorithms. These algorithms compare known expected physiological data results for a user's age group and physical conditioning rating for a given set of reps of different size weights with both the real time biometric data being generated and the known moving average personal history data of the user for the particular weight lifting exercise being monitored. The predictive algorithms can then infer which size weight is being lifted in real time, such as a 5, 10, 20 lb weight etc. As a user over time advances in conditioning strength the algorithm adjusts the moving average. This relieves the user of the time consuming task of having to accurately enter each weight size. The user has already been given a weight lifting routine which greatly simplifies this step. Additionally, although the lifting routine typically calls for a warm up order of increasing and then decreasing weight size being lifted, should the user digress and mix or skip a low end or a high end weight set, the data generated is interpreted by the predictive algorithm to automatically infer correctly the weight being lifted. The predictive algorithms are accurately best used when a personal data history has been developed and logged by the website.
Acceleration and velocity measuring proprietary algorithm programs are installed or downloaded to the Bluetooth® enabled smartphone. These apps wirelessly receive through the smartphone the motion data collected by the sensor module 3. The apps refine the raw data to send a useful and easily understood alert signal to the sensor module 3 in the event a correct threshold level for building muscle is not being maintained. This signal can be a particular flashing light color from one of the led lights 6 (other than the low battery power led light). In this manner, the user is alerted to at that time discontinue the exercise set as no longer being effective.
A proprietary cardio and weight lifting assessment (explained further) can be generated automatically using any of the universal sensor modules such as 3 or 53 mounted on any of the wrist band, the ankle band, the combination heart monitor sensor with chest strap and the magnetic cradle 10. This assessment is an important tool which assists in creating an individualized program for the user after they perform the specific motion/weight lifting tests set forth in the assessment protocol.
Optionally, the user may also elect to purchase a low energy Bluetooth® enabled or WiFi enabled weight scale to track body weight and body composition or body mass data that will be analyzed in real time by the assessment program. The data from the weight scale is automatically wirelessly sent to the smartphone of the user.
By use of state of the art technology and backend programming on the apps and the social website, the profile questions asked at the website signup of the user, and the cardio and weight lifting assessment data provided by the universal sensor module and heart rate monitor, customized fitness programs specific to each individual are developed to create the ultimate fitness and health-training tool.
These programs eliminate the need for and high cost of personalized trainers. The expense and time required to go to a professional gym can be avoided by the user in favor of the privacy and scheduling of exercise time for a home exercising program. Unnecessary waiting on others for limited gym equipment to become available is also avoided.
The user's smartphone downloaded with proprietary motion algorithm apps combined with the above state of the art motion sensing technology enhances a social website internet fitness training (SWIFT) based support system. The user is guided by unique personalized differentiators that guide physical training, provide feedback and analysis, giving the user a tool to better fitness and dietary health goal decisions.
Once the user downloads the just referred to smartphone app, the user is greeted with a very friendly and unique signup page. This page gathers information about the user to help generate and create an individualized workout program and profile based on the user's body type, fitness level, goals, and preferred mode of training.
Upon accessing the Jawku website, the user in STEPS 1-2 enters personal profile information, such as name, gender, age, physical description parameters, fitness programs engaged in, if any, current diet programs and diet preferences, sports engaged in, etc. as shown by
In STEP 3, as shown by
1. Tactical (e.g. crossfit, military, run+gun) (high intensity interval training)
2. Athletic Performance (Sport agnostic, it does not matter what position played with goals being to get bigger, faster, stronger.)
3. Weight Loss (Moderate-low intensity for sedentary lifestyle)
4. Bodybuilding (e.g. increase muscle mass, decrease fat, targeted body sculpturing)
5. Health +Wellness (Healthy lifestyle)
6. Endurance Athlete (e.g. marathons, strong man competitions, tri-athlete, runners, swimmers, bikers, hikers, surfers, etc).
The STEP 3 web page also captures height, weight, age, athletic/nonathletic, and experience level, low/medium/high.
In STEP 4, the user accesses a web page shown by
Jawku website's intellectual property and proprietary programs including algorithms are utilized to develop a personalized training program unique to the user. The website evaluates the user's profile page and the cardio and weight lifting assessment data to recommend the weights the user should use during training in addition to other items for training and testing purposes. A weekly/monthly customized user schedule for weight exercises, ranges and reps and sets is generated. Progress targets when met cause these schedules to be regularly upgraded. Schedule changes are also made when target goals are not achieved.
A profile page, as depicted by
A daily, weekly or monthly workout calendar, as depicted by
A workout template, as depicted by
A history analysis, as depicted by
In
A graph of a bench press exercise of pounds of weight lifted over time is depicted by
For the selected exercises or Sports Combine tests (as an example the NFL Scouting Combine tests), goals can be created and then tracked so the user can see as an incentive what effort is needed to reach and exceed user goals. A website page capable of being viewed on a smartphone is depicted in
Plural goals can be tracked on the same website page as shown in
For various endurance exercises, such as running or distance training as for a marathon, the app monitoring the data given by any of the sensor modules 3, 53, 63 and the heart sensor produces data in graph form relevant to heart rate zones. A heart rate graph, as depicted by
As depicted in
The website workout page, depicted in
Right
Also, alphanumeric reference figures (not shown for simplicity) can be overlayed over the specific muscle or muscle groups of the avatar to allow the user to click on index library filters. These filters allow the users to explore Jawku's professional database of over 500 exercise videos.
The
In most repetitive exercises, it is common practice to provide rest intervals between each rep which require the exertion of large amounts of energy and places strain on the muscle groups and joints undergoing conditioning. The Jawku exercise website provides interval training charts for each such exercise to aid the athlete in proper rest time pacing in a proven safe, effective and time efficient manner rather than the far more aggressive sessions promoted on television, such as Insane Workout.
Benefits of TRUE interval training are:
1) Develops all cardiovascular systems:
2) Burns Calories
3) Increased Motivation
4) Increased Cardio Strength
5) Increased Metabolism.
A wide variety of Sports Combines exist in which have developed specific athletic skill tests to measure where an athlete is ranked. Specific exercises and programs are developed to improve an athlete's performance in weak areas revealed by these tests. In American professional football, the NFL Scouting Combine uses these tests to evaluate prime candidates for the team drafts. The Jawku motion sensors above disclosed can measure at least six of these skill tests. A website page shown in
A specific current score known as the “Jawku Score” or “J Score™” is assigned for each test based on a number of predetermined psychological factors of each user. For example,
The Jawku Score or “J-Score™” is based on a proprietary algorithm used as a ranking system and score generator. The “J-Score” has been calculated based on age and gender. As an example, the partial tables depicted in
An app is downloaded to the smartphone which shows after each test the percentile ranking and J-Score. The fitness website provides a data bank of all users who want to register their score to see where they rank amongst all Jawku users. The J-Score tables are imbedded in the apps logic. When a user completes a test a score can be generated based on the result. When a user completes two or more tests an average (mean) is taken from those tests to generate an overall score.
An example of an overall Jawku Score using the
A 16 year old boy does the vertical jump and reaches 28 inches.
He is in the 70th percentile.
His J-Score is 8.
The same boy then does the 40-yard dash in 5.43 seconds.
He is in the 20th percentile.
His J-Score is 3.
His combined score is the average of 8 and 3.
His over-all J-Score is 5.5.
Then he Broad Jumps 8′2″.
J-Score is 9.
His over-all J-Score is 6.75 (6.67 is rounded to the nearest 0.25 J-Score).
The Jawku™ website goal is to target the individual's needs and pair exercises and diet with the unique demands revealed by the provided user profile. Each exercise session is tailored to elicit a specific training response and develop each particular cardiovascular system required to achieve success. Jawku™ targets the user's cardio vascular system through conditioning exercises based on interval training. Interval training alternates between exercises requiring high intensity efforts with periods of “TRUE” recovery. This will take an individual from 65% of the max HR (heart rate) to 95% and then back to 65%.
Referring to
The object is to obtain data representative of Heart Rate Numbers at VT(AT) and Peak VO2. The term “VT/AT)” refers to ventricle threshold/AT (anaerobic threshold) which is the maximum intensity level at which the body can supply adequate oxygen to the muscles. The term “Peak VO2” or “VO2 Max” refers to the maximum amount of oxygen consumed by the body during exercise. Jawku uses Peak VO2 testing to evaluate the cardiovascular fitness and aerobic endurance of those training like athletes. The three heart rate training zones (yellow, green and red) shown in
In doing the cardio assessment test of STEP 4, the user ideally can elect to use a home treadmill or a professional gym treadmill using the following treadmill instructions: Treadmill assessment test instructions:
The user chooses the speed that can be held for 20 minutes (6-10 mph).
The heart rate sensor 64 is worn snugly on the core (chest) to track HR for a set time duration such as every 30 seconds.
Alternatively, the user has the option of doing the cardio assessment without the treadmill by wearing the heart rate sensor in conjunction with an app on the smartphone that tells the user to slow down and speed up and to stay in the correct heart rate zone while doing the assessment.
At end of assessment a “2 Minute” HR recovery data is collected with treadmill set at 3 mph 0 degree incline.
EXAMPLE of “TRUE” recovery period:
(AT) HR 165
(PK) HR 195
The cardio assessment uses the 220-Age calculation to provide the user's estimated HR. Several cardio template programs are used to create the app which modifies the max HR per individual while still carrying out the fitness goals. For example, if the individual's exercise program calls for:
It is important to note that a HR monitor is preferred to more accurately follow cardiovascular training zones.
As an alternative embodiment, the 6-DOF sensor module is designed to measure wattage. This data can be used for calculating and programming the app downloaded to the smartphone without use of a heart rate monitor.
As an alternative embodiment, the sensor module 3,53 need not be universal but separately provided for each wrist, ankle and body core (chest) to allow rapid shifting to save time and wear from for example, arm weight lifting to leg weight training.
The metabolic equivalent to exercise calories is MET for each different type of activity. MET is a relative measure of intensity. The formula for calories burned during exercise is as follows:
Total Calories Burned=Duration (in minutes)×(MET×3.5×weight in kg)/200
So, if a person weighing 68 kg did low impact aerobic exercises for 30 minutes, the calculation would be:
Total Calories Burned=30 min×(MET×3.5×68 kg)/200
To figure out the MET, C =calories burned, m=MET.
C=30×(m×3.5×68)/200
C=30×(m×238)/200
C=30×(m×1.19)
C=35.7×m.
Using a built in calorie calculator as part of the app downloaded to the smartphone and selecting the correct information (68 kg for weight, aerobic, low impact and 30 minute duration) yields an answer of 180 calories.
180=35.7×m
Dividing each side by 35.7 yields the MET variable of 5.042017. As stated before, the MET is different for each different type of exercise and intensity level. This is why the value is an approximation and not exact. In
According to the Compendium of Physical Activities (online website Https://sites.google.com/site/compendiumof physical activities/) the MET NUMBER for basic easy running is 4.97±1.23 and changes to 5.69±1.34 for basic medium running. By determining the person's VO2 Max, Jawku's proprietary algorithms are able to determine a wide range of values such as how many calories a person burns, their fitness level, speed and distance ability and MET capabilities.
The second assessment called for in STEP 4 is a weight strength exercise used to measure peak power. Power is an output of how much force a person can generate in a brief amount of time. Strength times speed equals power or mass times velocity equals power. This is peak power.
Peak power in this case can be looked at as a 1RM (I Rep Maximum). Anything less than peak power or 1RM can be related to a percentage of the 1RM (100%). A table shown in
The viewer uses the
Once the user clicks on their reps achieved, the app in the smartphone automatically divides the weight the user lifted by that percentage using decimals (for example, 83% equals 0.83) and that provides an approximation of the user's one repetition maximum. For example, if the individual can perform 10 reps with 175 lbs. in the bench press, that means that 175 lbs. is 75% (0.75) of their one repetition maximum. So the app using the above table divides 175 lbs by 0.75 which yields 233 lbs. as the one rep maximum.
The subsequent program that follows then give the user the suggested weight based on percentages. For example, if the user's 1RM for a Lat pull down is 155, and “Body Builder” was selected from the six profile alternatives chosen, the template for body builder would look as shown in
Often a tapering of an athlete's training sessions is scheduled for several days prior to an in-season or opening game day to avoid overtraining. An “unload equation” is used to calculate a new lower 1RM. These equations are different for 4 commonly used different Bench Press exercises.
As an example, for a 1 Rep Max for a Flat Barbell Bench Press the formula used is:
(Weight×Reps×[0.0333])+Weight
wherein Weight=the Heaviest weight the individual can safely lift, Reps=the amount of full reps completed and 0.0333=Constant. If 315 lbs. is the individual's weight lifted and 5 reps are completed, the above formula yields 367.4 lbs as the 1Rep max.
The unload equation used is:
[(Weight×Reps×[0.0333])+Weight]×0.64.
Note that the unload equation above uses an additional constant of 0.64 which yields 367.4 lbs. X 0.64=235 lbs. as the unload weight to be lifted.
As an example, for a 1 Rep Max Inclined Barbell Bench Press the formula used is:
[(Weight×Reps×[0.0333])+Weight]×0.8.
Assuming weight lifted is 315 lbs and 5 reps are completed, the formula yields 294 lbs. weight to be lifted. The unload equation uses the additional multiplying constant of 0.64 to yield 188 lbs. as the 1 Rep Max Unload weight to be lifted. The unload equation is:
[[(Weight×Reps×0.0333)+Weight]×0.8]×0.64.
In another example, for a 1 Rep Max Dumbbell Flat Bench Press, the formula is:
(367 lbs/2)×0.9=165 lbs 1 Rep Max
Multiplying 165 lbs×0.64 yields 105.6 lbs. as the unload weight each hand lifts.
In another example for a 1 Rep Max Dumbbell Incline exercise, the unload equation is:
(294 lbs/2)×0.9=132 lbs 1 Rep Max
Multiplying 132 lbs×0.64 yields 84.5 lbs as the unload weight each hand lifts.
The weight lifter used in the Unload Equations examples, first places the magnetic motion sensor module 3 or 53 held in the
Pushups are another exercise generating biometric data sensed by the 6-DOF sensor module. Primarily, pushups in their various forms are calisthenics exercises used to build strength and endurance. Pushups are sometimes measured by various forms of Sport Combines aside from American/Canadian Football. The user is instructed to perform a series of pushups. The first pushup measured will be a maximal effort to retrieve Peak Power. The sensor module is best worn about the sternum using the chest mounted sensor module. A range of movement is measured from 0-18.0 inches. The pushup velocity is measured in units of mph or kph. A range of velocity is set at 0-250mph or 0-500 kph.
Push up Power can be represented by the formula:
where Work(n) is Pushup Repetitions and time(t) is minutes. The maximum number of pushups achieved in a unit of time, such as one minute represents Pushup Peak Power expressed as Maximal Pushups per Minute. A chart (not shown) is viewable on the smartphone showing the repetition number of pushups suggested to be attempted over 5-10 minute intervals as a percentage of the Maximal Pushups per Minute rate of repetition.
An example of an Olympic exercise by which the user generates 6-DOF biometric motion data is the Olympic Power Clean. The user places the 6-DOF sensor module in the magnetic cradle 10 of
The user engages in a power clean using correct technique to perform one hang clean. The user begins when the sensor module signal alerts the user. The sensor module tracks peak power as a percentage of power based on each repetition. The app in the smartphone sets a range of 0-100.0 inches and a velocity range in units of mph of 0-50 mph or a range in kph of 0-100 kph.
Power can be represented by the formula:
An alert can be set by the app when the repetition is less than 85% of peak power.
Examples that follow of the biometric motion data gathered by the 6-DOF sensor module and sent to the smartphone are for exercises modeled after the NFL Scout Combine tests. The data are interpreted by an app using mathematical equations and formulas for calculations by the Jawku proprietary 6-DOF algorithms. The exercises monitored include the vertical jump, horizontal/broad jump, 40 yard dash (timed at 10, 20 30 and 40 yd intervals), 20 yard shuttle (also called the 5-10-5), 60 yard shuttle (also called the 15-30-15), and the three cone drill (also called the L-Drill). The 225 lbs. bench press counts repetitions to failure with reps counted using the Jawku 6-DOF sensor module. The 20 yard shuttle, 60 yard shuttle and three cone drill tests are monitored using the Jawku 6-DOF sensor with results calculated using algorithms similar to the 40 yard dash and as such are not discussed further.
The athlete while wearing the 6-DOF sensor module establishes a standing position. Upon the sensor module signaling the system is ready, the athlete performs a full countermovement vertical jump. The athlete will attempt to jump as high as possible. The sensor module measures flite time and jump height. The flite time is measured in units of seconds and the flite time range is set at 0.00-5.00 seconds. The jump height is measured in either inches or centimeters. Using a toggle, the jump range is set at 1.00-60.00 inches and at 3.00-152.40 centimeters.
The data collected is recorded to the fitness website and displayed to the athlete's smartphone. These are the vital measurements output from the exercise as well as the formulas used during coding the app:
Timelanding−Timetakeoff=X.XX sec
The athlete while wearing the 6-DOF sensor module establishes a standing position behind the start line. Upon the sensor module signaling the system is ready, the athlete performs a full countermovement horizontal jump. The athlete jumps to the right, resets and jumps again to the left. The athlete attempts to jump as far as possible. The jump range is measured in feet and inches and using a toggle is also measured in meters. The jump range is set at 0-20 feet and 0-11.9 inches with a meters range set at 0-12.2 meters.
The data collected is recorded to the fitness website and displayed to the athlete's smartphone. The vital measurement output from the exercise is the jump distance traveled in the air as measured in feet and inches or meters. This exercise is sometimes called the standing long jump. Two jumps are attempted.
The athlete while wearing the 6-DOF sensor module establishes a start position and sprints 40 yards as fast as possible. The sensor module signals the athlete alerting the athlete when to go. The sensor module tracks times at 10 yards, 20 yards, 30 yards and 40 yards. Time starts to record once the sensor module is ready.
The 40 yard dash time is measured in units of seconds. The seconds range is set at 0-9.99 seconds. A peak velocity is measured in units of mph, kph, or m/s. The velocity range is set at 1-29.99 mph, 1-48.28 kph and 1-13.4 m/s using a toggle.
A peak acceleration is measured in units of m/ŝ2 or G's using a toggle. The acceleration range is set at m/ŝ2: 0-30.0 m/ŝ2 or 0-4.10 G's,
The same settings of seconds range, velocity range and acceleration range are used to measure the start-10 yard split, the start 10-yard average velocity and the start-10 yards average acceleration. This also applies to the measurements of the 10-20 yard split, the 20-30 yard split and the 30-40 yard split.
The data collected for the 40 yard dash is recorded to the fitness website and displayed to the athlete's smartphone. These are the vital measurements output from the exercise as well as the formulas used during coding the app:
The above 40 yard dash results are broken up, recorded to the fitness website and displayed to the athlete's smartphone as follows:
The biometric data generated by the JAWKU 6-DOF sensor is processed by the application running on either a smartphone or the JAWKU website. The raw accelerometer and gyroscope data is referenced to the coordinate system associated with the moving sensor frame, and not the required earth reference frame. Once the sensor data file is fully uploaded to the smartphone via Low Energy Bluetooth (LEB), the raw accel/gyro data is transformed to the earth frame via a 3×3 coordinate matrix transform. Once transformed to the earth frame, the gravity component of the accelerometer data is removed, leaving only the actual acceleration associated with the sensor/body movement. With the gravity component removed, the accelerometer data is reduced to a single vertical and horizontal component from the initial X, Y, Z accelerometer components. The vertical and horizontal components of the acceleration are used to calculate the various biomechanical elements for the movement under study.
The data format for sensor to smartphone is described as follows. There are only two types of packets from the sensor. The header packet contains the scaling and filtering information for the remainder of the packets to be uploaded. The format of the header packet is shown below:
|Arange(byte0)|Grange(byte1)|sample period(byte2)|temperature(byte3)|# of sample frames(bytes4-5)|.
The packet bytes are described as follows:
Byte 0—Arange—this is the range of the accelerometer, 2/4/6/8/16 g
Byte 1—Grange—Gyroscope range, 250/500/2000 degrees/sec
Byte 2—sample rate, 10/20/50 samples/sec or 100/50/20 msec/sample
Byte 3—temperature
Byte 4-5—# of sample packets following the 0th packet.
The format of the 0th thru Nth data sample packet is shown below:
|frame #(bytes0-1)|Ax L (byte2)|Ax H(byte3)|Ay L(byte4)|Ay H(byte5)|Az L(byte6)|Az H(byte7)|
The sample packet bytes are described as follows:
Bytes 0-1—frame # of current frame, starts at 0, ends at N−1, where N is given in bytes 4-5 of the header packet
Byte 2—Accel x low byte
Byte 3—Accel x high byte
Byte 4—Accel y low byte
Byte 5—Accel y high byte
Byte 6—Accel z low byte
Byte 7—Accel z high byte
Byte 8—Gyro x low byte
Byte 9—Gyro x high byte
Byte 10—Gyro y low byte
Byte 11—Gyro y high byte
Byte 12—Gyro z low byte
Byte 13—Gyro z high byte.
The 0th sample packet gyro values, bytes 8-13, are set to zero. This is due to the 0th packet representing the static orientation of the sensor at the beginning of the sample period. The initial static orientation of the sensor is derived from this sample as the accelerometer data only includes gravity vector data. The rotation is represented by the three Euler angles, which are defined as CCW rotations about the X′, Y′, and Z′ axes of the coordinate system associated with the sensor. Once the initial orientation is known, pitch and roll angles, the orientation of subsequent packets is determined by adding the detected gyro rotation associated with each sample packet to this initial value. The continuous calculation of the current sensor orientation is required to allow the gravity component to be continuously removed from the accelerometer data once the vector components are transformed to the earth reference system X, Y, and Z.
An example of a technique to identify conditions to reestablish the orientation of the sensor independent of the gyro data is next described. This orientation reset will minimize the effect of gyro drift over the course of the sample period, albeit small given the short duration of the sampled event. First, a determination of the initial orientation of the sensor relative to earth coordinates is made.
In order to determine the vertical and horizontal components of the measured acceleration in the earth frame coordinates X, Y, and Z axes, the real-time component of the gravity vector must be subtracted from the raw acceleration data. To facilitate this, the sensor begins to sample and store the 6-DOF sensor accelerometer and gyro data once the start button on the sensor is pushed. Once pushed, the sensor data is continuously sampled and stored to the sensor FIFO buffer (chip 25) with the FIFO buffer being capable of storing several minutes of the 6-DOF data. As each sample is stored to the FIFO, the scalar values of the 3 gyro vectors are continuously monitored. If it is found that all three gyro vector magnitudes are below or equal to a predetermined noise floor of the sensor, it can be assumed that the sensor, and associated body segment, is static or not moving.
The logic used here is based on the fact that all human motion is derived from joint rotation and not linear motion. It is very difficult, if not impossible, for a body part to be moving without a rotational component. If the sensor is static, there is no rotation about any of the sensor axes resulting in no acceleration component associated with the sensor axis. This condition results in the sample containing ONLY the contribution from the gravity vector. If this condition is detected, the current sample becomes the 0th sample packet in the current motion capture sequence and will be used to calculate the initial roll angle φ, rotation about the sensor X′ axis and the pitch angle θ, rotation about the Y′ axis. It must be noted that the Yaw angle ψ, rotation about the Z′ axis cannot be determined by a 6 DOF sensor but requires an additional 3 axis magnetometer to create a 9-DOF sensor. Fortunately, this is not a problem for this application as only the vertical component, Z axis, and the horizontal component, combination of the X and Y axes, are required.
Due to only the roll and pitch angles being required, the 3D matrix transform can be represented by a simple 3×3 rotation matrix shown as
where VX, VY, and VZ are the vector components in earth referenced coordinates (X,Y,Z), VX′, VY′, and VZ′ are the measured vector components in the sensor frame (X′,Y′,Z′), roll angle φ, and pitch angle θ.
Normally the VX′, VY′, VZ′ values measured by the sensor accelerometer components are given as
V
X
′=G′(x)+A′(x)+N′(x)
V
Y
′=G′(y)+A′(y)+N′(y)
V
Z
′=G′(z)+A′(z)+N′(z) eqn. 2
where G′(x,y,z) are the gravity vector components tangent to X′, Y′, and Z′ sensor axes, respectively. A′(x,y,z) are the desired motion induced acceleration vector components again tangent to the sensor axes, respectively. The random noise components N′(x,y,z) of the measurements can be neglected at this time.
If it is assumed that the acceleration components, A′(x,y,z) are zero, and the noise is neglected in eqn. 2, the sensor measurements represent only the gravity vector components in the X′, Y′, Z′ sensor frame represented as
By definition, the gravity vector in the earth referenced frame is given as
Where the full gravity vector G is tangent to the earth reference Z axis with the X and Y components zero resulting in GZ=G. Inserting eqns. 3 and 4 into eqn. 1 and solving for φ and θ results in
where φo and θo are the initial roll and pitch angles associated with the 0th sample packet.
Recall that the 0th sample packet has the three gyro rotations values set to zero as they are ignored for the 0th sample packet only. As the arctangent is being used, the sign of both arguments must be used to determine which quadrant the actual angle resides.
With the initial angle calculated from the 0th sample packet, the gyro data is used in the subsequent sample packets to calculate the current sensor orientation. For each sample packet, the current roll and pitch angles are calculated by adding the incremental changes in the two Euler angles associated with the X′ and Y′ axes of the sensor gyro as
φN=φN-1+(ωNX*tsample) eqn. 7
θN=θN-1+(ωNY*tsample) eqn. 8
where ωNX and ωNY are the rotation rates in degrees/sec of the Nth sample, as measured by the sensor gyro, around the X′ and Y′ sensor axes, respectively, tsample is the sensor sample rate as given in the header packet
With φN and θN calculated, the current Nth sample can be transformed from the sensor frame back to the earth frame with eqn. 1 as
V
NX
=A
NX
=V
NX′(cos θN)+VNY′(sin φN sin θN)+VNZ′(cos φN sin θN) eqn. 9
V
NY
=A
NY
=V
NY′(cos φN)−VNZ′(sin φN) eqn. 10
V
NZ=(ANZ+G)=−VNX′(sin θN)+VNY′(sin φN cos θN)+VNZ′(cos φN cos θN) eqn. 11
where ANX, ANY, and ANZ are the desired motion induced accelerations represented in the earth reference frame via the calculated φN and θN roll and pitch angles for the Nth sample. Note that the full gravity vector G must be subtracted from the VNZ component to extract the Z acceleration component, ANZ.
Finally, the vertical and horizontal acceleration components in the earth reference frame can be expressed as
ANvertical=ANZ eqn. 12
A
Nhorizontal=(ANX2+ANY2)1/2 eqn. 13.
From this now acceleration data presented in the earth frame coordinates the vertical and horizontal velocities can be determined via
U
N
=U
N-1+(AN*tsample) eqn. 14
where UN is the velocity magnitude for the Nth sample. p In a similar fashion, the vertical and horizontal displacements can be determined via
where DN is the linear displacement for the Nth sample. It must be noted that the constants of integration have been set to zero, initial velocity and displacement are assumed to be zero at t=0.
What follows in an example of the data transferred from the sensor to the smartphone application. The first packet from the sensor is the header packet with the format shown as:
|Arange(byte0)|Grange(byte1)|sample period(byte2)|temperature(byte3)|# of sample frames(bytes4-5)|.
The packet bytes are described as follows:
Byte 0—Arange—this is the FS range of the accelerometer, 0=2 g, 1=4 g, 3=6 g, 4=8 g, 5=16 g
Byte 1—Grange—Gyroscope FS range, 0=250 dps, 1=500 dps, 2=2000 dps, (dps=degrees/sec)
Byte 2—sample rate, 0=10 s/sec, 1=20 s/sec, 3=50 s/sec (s/sec=samples/sec) or 100/50/20 msec/sample
Byte 3—temperature is given in 8 bit 2's compliment, +/−127°
Byte 4-5—# of sample packets following the header packet.
The format of the 0th thru Nth data sample packet is shown below:
|frame #(bytes0-1)|Ax L (byte2)|Ax H(byte3)|Ay L(byte4)|Ay H(byte5)|Az L(byte6)|Az H(byte7)
|Gx L(byte8)|Gx H(byte9)|Gy L(byte10)|Gy H(byte11)|Gz L(byte12)|Gz H(byte13)| sample data:
The frame #, bytes 0-1 is given in unsigned 16 bit, the accelerometer and gyro data, bytes 2-13, are given in 16 bit, 2's compliment. Extracting the values from sample 0 yields:
sample #=00=0th sample
Note that sample 0 has the gyro data set to zero as the accelerometer data represents only the gravity vector. The initial φ0 and ƒ0 via eqns. 5 and 6 are respectively:
Due to no acceleration component in the 0th sample, the magnitude of the G vector in terms of the sensor LSB's is determined by:
G=G
z=[(29022)2+(18722)2+(2603)2]1/2=34635 LSBs.
G must be subtracted from VNZ once the V′ is transformed to V via eqn. 11 for all subsequent samples 1 thru N.
sample #=01=1st sample (note: all values are in LSBs)
Via the header packet, assume the gyro FS sensitivity co is given as 500 dps or 17.50×10−3 dps/LSB and tsample=50 msec/sample. The new orientation angles φ1 and θ1 via eqns. 7 and 8 are calculated, respectively:
φ1=φ0+ωx1*tsample=82.1°+(8789*17.5×10−3*50×10−3)=82.1+7.69=89.79° and
θ1=θo+ωy1*tsample=−56.9°+(−8318*17.5×10−3*50×10−3)=−56.9−7.28=−64.18°.
Using the calculated angles, the V′ vector components can be transformed to the earth frame V vector components via eqns. 9, 10, 11 as shown below:
V
NX
=A
NX
=V
NX′(cos θN)+VNY′(sin φN sin θN)+VNZ′(cos φN sin θN)
V
1X=29010 cos(−64.18)+18730 sin(89.79)sin(−64.18)+3113 cos(89.79)sin (−64.18)=−42146 LSBs
V
NY
=A
NY
=V
NY′(cos φN)−VNZ′(sin φN)
V
1Y=18730 cos (89.79)−3113 sin (−64.18)=28709 LSBs
V
NZ
=−V
NX′(sin θN)+VNY′(sin φN cos θN)+VNZ′(cos φN cos θN)−G
V
1Z=−29010 sin(−64.18)+18730 sin(89.79)cos(−64.18)+3113 cos(89.79)cos(−64.18)−34635=−358 LSBs.
From these earth frame components, the vertical and horizontal components of the acceleration are calculated via eqns. 12 and 13, respectively. Letting G=9.8 m/sec2 :
A
1V
=A
1Z=−358*0.122×10−3G/LSB=−43.735×10−3G=−0.4286m/sec2
A
1H=(A1X2+A1Y2)1/2=[(28709)2+(−358)2]1/2*0.122×10−3G/LSB=3.50G=34.4 m/sec2.
As can be seen in this example, the acceleration is primarily in the horizontal plane with a very small downward component via the Z component.
Finally, the vertical and horizontal speed and displacement is calculated via eqns. 14 and 15, respectively.
U
1V
=A
1V
*t
sample=−0.4286×10−3*50×10−3=−0.0214 m/sec
D
1V=1/2A1Vt2sample=−1/2*0.4286×10−3*(50×10−3)2=−536×10−6 m=−536 μm (microns)
U
1H
=A
1H
*t
sample=34.3*50×10−3=1.715 m/sec
D
1H=1/2A1Ht2sample=1/2*34.3*(50×10−3)2=42.88×10−3 m=42.88 mm (millimeters).
This process is repeated for each Nth sample.
sample #=02=2nd sample
determine φ2 and θ2:
φ2=φ1+ωx2*tsample=89.79°+(8800*17.5×10−3*50×10−3)=97.49°
θ2=θ1+ωy2*tsample=−64.18°+(−8332*17.5×10−3*50×10−3)=−71.47°.
sample #=03=3rd sample
determine φ3 and θ3:
φ3−φ2+ωx3*tsample=97.49°+(8801*17.5×10−3*50×1031 3)=105.19°
θ3=θ2+ωy3*tsample=−71.47°+(−8330*17.5×1031 3*50×10−3)=−78.76°.
sample #=04=4th sample
determine φ4 and θ4:
φ4=φ3+ωx4*tsample=105.19°+*8802*17.5×10−3*50×10−3)=112.89°
θ4=θ3+ωy4*tsample=−78.76°+(−8329*17.5×10−3*50×10−3)=−86.05°.
During the motion period under study, occasionally the user's body segment will randomly be static for one or more sample periods, i.e. change in direction requires the motion to be zero at the inflection point. This condition is easily detected in that all three gyro axes will record no rotation with the individual gyro axes values being zero, or below the predetermined noise floor. When these samples are seen during the data reduction process, the current orientation of the sensor can be calculated via the same process as described for the 0th sample. This dynamic reset of the sensor orientation will allow the accumulated drift error to be removed or minimized. As mentioned earlier, each sample contains a random noise element that results in a linear error accumulation that increases with time.
Eventually, the accumulated errors in the calculation of the current sample φ and θ angles result in an increasing error in subtracting the gravity component from the current sample accelerometer data. Eventually, this accumulated error will render the calculated speed and distance useless. If the aforementioned sample is detected, it is preferred to recalculate the φ and θ via the 0th sample method and NOT simply add the incremental angle associated with the Nth sample to the N−1th angle.
Additional signal enhancement can be achieved by using a linear interpolation technique to reduce the error in the calculated angles between successive static samples. Various known in the art techniques can be employed to post-process out this accumulated error resulting in considerable improvement in signal quality.
The wireless internet smart device 26 referred to in
It is intended by the use of the word “Combine” to cover all forms of sport activities from the professional level to the grade school, high school, college and minor league levels and not just the professional American /Canadian football sports. It would be readily apparent to those skilled in the art that the teachings of this invention are applicable to the fitness training in the sports of soccer, baseball, field and ice hockey and basketball. The invention is also applicable to all forms of individual exercises such as dancing, ice figure skating, the games of Summer, Winter, and Special Olympics, yoga, plyometrics, calisthenics, rowing, and a mix thereof, such as by way of examples cross training and triathlons. The invention is also applicable to many activities requiring fitness training for physical strength and endurance such as bicycle racing, marathons, swimming, surfing, scuba diving, beach and water volleyball, tennis, golf, hiking and mountain climbing. Benefits of the invention are available to those engaged in activities such as boxing, wrestling, hang gliding, sail surfing, bull fighting, the running of the bulls (running with the bulls), rodeo events, weightless fitness exercising in space, fencing, and hunting. Conditioning for all forms of sports and other indoor or outdoor activities may benefit from the invention.
Those individuals engaged in rehabilitation exercises and those trying to lose weight or build body mass also may benefit from the health advantages set forth by the invention.
In the instant specification, it is to be understood that the terms “sensor module”, “universal sensor module”, “universal sensor motion module”, “universal exercising motion sensor module” and “universal motion exercising sensor module” may be used interchangeably as all the modules contain the 6-DOF mems motion detecting sensor with attendant motion coded algorithms.
As used herein, the terms “include”, “including”, “for example”, “e.g.” and variations thereof, are not intended to be terms of limitation, but rather to be followed by the words “without limitation”. Various modifications to the preferred embodiments and the generic terms, principles, features and advantages of the present invention expressed in the written description and figures should not be limited to the exact construction and operation as illustrated and described. Many modifications, changes and equivalents will be readily apparent to those skilled in the art and are intended to fall within the scope of the invention which is not intended to be limited to the embodiments disclosed but is to be accorded the widest scope consistent with the principles and features described herein.
This is a division of and claims priority to co-pending U.S. patent application Ser. No. 14/121226 filed Aug. 14, 2014 which makes reference to, claims priority to, and claims the benefit of U.S. Provisional Applications Ser. No. 61/959,476, filed Aug. 26, 2013 and Ser. No. 61/995,072 filed Apr. 3, 2014 with both entitled “Biometric Data Gathering”. The above stated applications are hereby incorporated by reference in their entirety.
Number | Date | Country | |
---|---|---|---|
Parent | 14121226 | Aug 2014 | US |
Child | 15731379 | US |