A number of different automatic pool cleaners exist. Most automatic pool cleaners include one or more components for driving the pool cleaner along a floor and sidewalls of a swimming pool. For example, conventional pressure side cleaners and suction cleaners often use hydraulic turbine assemblies as drive systems to drive one or more wheels. Water supplied through the pool cleaner drives the turbine assemblies, which in turn, drive the wheels. Robotic pool cleaners have also been developed that utilize a motor instead of water to drive the pool cleaners.
Most existing pressure and suction side cleaners and some robotic pool cleaners operate according to random algorithms. In other words, the path of the pool cleaner is random. Some robotic cleaners are operated in a more deliberate manner utilizing a control algorithm, but many of such control algorithms do not function to clean a swimming pool much better than the random algorithms.
Embodiments of the invention provide a pool cleaner control system. The pool cleaner control system includes a pool cleaner having an imaging device and a controller. The imaging device is configured to acquire at least one image of an aquatic environment. The controller is in communication with the imaging device. The controller identifies candidate debris from the at least one image, analyzes at least two potential candidate debris-containing pathways, and determines which of the at least two potential candidate debris-containing pathways is an optimal cleaning pathway.
Some embodiments provide a method of determining a path for a pool cleaner including an imaging device. The method includes the steps of acquiring one or more images in an aquatic environment using the imaging device, analyzing the one or more images to identify debris, identifying at least two potential debris-containing pathways in the aquatic environment based on the identified debris, determining which of the at least two potential debris-containing pathways is an optimal cleaning pathway, and navigating the pool cleaner to remove the debris along the optimal cleaning pathway.
Before any embodiments of the invention are explained in detail, it is to be understood that the invention is not limited in its application to the details of construction and the arrangement of components set forth in the following description or illustrated in the following drawings. The invention is capable of other embodiments and of being practiced or of being carried out in various ways. Also, it is to be understood that the phraseology and terminology used herein is for the purpose of description and should not be regarded as limiting. The use of “including,” “comprising,” or “having” and variations thereof herein is meant to encompass the items listed thereafter and equivalents thereof as well as additional items. Unless specified or limited otherwise, the terms “mounted,” “connected,” “supported,” and “coupled” and variations thereof are used broadly and encompass both direct and indirect mountings, connections, supports, and couplings. Further, “connected” and “coupled” are not restricted to physical or mechanical connections or couplings.
The following discussion is presented to enable a person skilled in the art to make and use embodiments of the invention. Various modifications to the illustrated embodiments will be readily apparent to those skilled in the art, and the generic principles herein can be applied to other embodiments and applications without departing from embodiments of the invention. Thus, embodiments of the invention are not intended to be limited to embodiments shown, but are to be accorded the widest scope consistent with the principles and features disclosed herein. The following detailed description is to be read with reference to the figures, in which like elements in different figures have like reference numerals. The figures, which are not necessarily to scale, depict selected embodiments and are not intended to limit the scope of embodiments of the invention. Skilled artisans will recognize the examples provided herein have many useful alternatives and fall within the scope of embodiments of the invention.
Embodiments of the invention provide a cleaning vehicle for operation in enclosed aquatic environments. More specifically, embodiments of the invention provide control algorithms for operation of an autonomous robotic pool cleaner for operation in aquatic environments, for example, swimming pool and/or spa environments. The control algorithms utilizes images or videos to determine target or candidate debris for removal. The control algorithm allows the pool cleaner to target and collect debris, rather than roaming aimlessly and randomly throughout the aquatic environment, thereby traversing and cleaning the entire aquatic environment in a shorter period of time.
In some embodiments, the pool cleaner 20 includes a plurality of wheels, for example, a set of front wheels 40 and a set of rear wheels 42, each of which are driven by a drive system (not shown). One front wheel 40 and one rear wheel 42 are operatively coupled to the first side wall 28 and one front wheel 40 and one rear wheel 42 are operatively coupled to the second side wall 30. Each of the wheels 40, 42 is driven by a drive system. The drive system may include, for example, a plurality of axles, gears, and/or other components that are operatively connected to, for example, a motor 44 that provides rotational energy to the axles, gears, and/or other components. In other embodiments, the pool cleaner 20 may be pressure or suction driven, in which case, the pool cleaner 20 may include a turbine or other fluid directing device that controls a flow of water through the pool cleaner 20 to rotate the wheels 40, 42. In the embodiment depicted in
Still referring to
While a particular pool cleaner 20 and variations thereof are described herein, it should be understood that the principles of the present invention may be implemented within any pool cleaner. For example, the principles of the present invention may be implemented within a suction or pressure side pool cleaner, within a pool cleaner having different components, features, and/or functions than the pool cleaner 20 described herein, or any other suitable pool cleaner.
As best seen in
The control system 100 may include the controller 102, such as a central processing unit (“CPU”), a graphics processing unit (“GPU”), or both, a processor 104, memory 105, a storage medium 106 (e.g., a database (not shown)), and/or any other suitable components (e.g., an input/output device, a display unit, a network interface device, a disk drive, etc.). The processor 104 may be, for example, a microprocessor, a microcontroller, digital signal processor, or any other suitable processor. The processor 104 is communicatively coupled to the memory 105. The memory 105 may be embodied as any type of suitable computer memory device, including fixed and/or removable memory devices (e.g., volatile memory such as a form of random access memory or a combination of random access memory and read-only memory, such as memory cards, e.g., SD cards, memory sticks, hard drives, and/or others). Program code, for example, the control algorithms disclosed herein, may be stored within the memory 105 and/or on the storage medium 106. The program code can be executed by the processor 104 to perform various operations, as will be discussed in more detail below.
The control system 100 may further include any number of suitable components for providing feedback to the controller 102 and/or to which the control system provides instructions. Exemplary components that provide feedback or information to the control system 100 include, but are not limited to, one or more imaging devices 110 configured to capture video or images of the aquatic environment (for example, one or more of a camera or image sensor, a video camera, and/or any other suitable imaging device). In some embodiments, one or more imaging devices may be mounted on the housing 22 of the pool cleaner 20, for example, at a front edge. In other embodiments, the imaging device may be mounted on other portions of the pool cleaner 20 and extend upwardly from the top wall 24. The imaging device is designed to be positioned in a location where debris in the aquatic environment may be sensed and recorded.
The imaging device 110 is designed to capture images of objects submerged within the aquatic environment. In some embodiments, the imaging device may be mounted on the outer surface of the housing 22 of the pool cleaner 20. In other embodiments, the imaging device 110 is mounted inside the housing 22 of the pool cleaner 20. In some instances, the imaging device 110 is mounted on a handle of the pool cleaner 20. In some embodiments, the imaging device is a camera and includes an image sensor. In one instance, the camera is manufactured by Omnivision Technologies (Santa Clara, Calif.) and is provided under the model OV09732-H35A. The camera and/or the image sensor may be provided in a waterproof case (not shown). Data from the camera and/or the image sensor may be processed via Raspberry Pi Compute Module 3 with custom written software for image processing.
The control system 100 may also include one or more gyroscopes 112, one or more tilt sensors 114, one or more accelerometers (not shown), one or more compasses 118, one or more other sensors 120, one or more inclinometers (not shown), or any other components that can provide feedback, for example, about the pool cleaner 20 and/or the environment around the pool cleaner 20.
Additionally, the controller 102 is capable of sending instructions to the imaging device 110, for example, to change an angle or viewing area of the imaging device 110 or to perform other functions. In some embodiments, the controller 102 may be in communication with the imaging device 110 and may also send instructions to the imaging device 110 to continuously collect images of an aquatic environment. The controller 102 may also send instructions to the motor 44 to control operation of the pool cleaner 20, to a directional control 124 to control movement of the pool cleaner 20, and/or to any other components of the pool cleaner 20 to control any operation of the pool cleaner 20. The controller 102 may also receive data from any of the components of the pool cleaner 20, for example, regarding function of those components (e.g., fault or other conditions).
The control module or system 100 may be further connected to a network (not shown), such that the control module or system 100 can communicate with remote devices, for example a computer, a mobile device, control modules or systems of other pool cleaners, or any other suitable devices. In this manner, instructions may be provided to the control module or system 100 to control various aspects of the pool cleaner 20. In an exemplary embodiment, a mobile device (e.g., by means of an application on the mobile device) may be utilized to turn the pool cleaner on and off, control movement of the pool cleaner 20, control the operational schedule of the pool cleaner 20, and/or control any other components, functions, or features of the pool cleaner 20.
The control system 100, through the controller 102, implements one or more algorithms that are intended to optimize cleaning paths, trajectories, or routes within an aquatic environment, for example a pool, by identifying specific locations of debris within the aquatic environment and determining a best path to take based on size and location of debris along each potential path and a smoothness of each potential path. During a cleaning operation, the control system 100 continuously evaluates different paths and takes the best path at each evaluation until the entire aquatic environment is clean or until the pool cleaner 20 is turned off. In this manner, the time necessary to clean the aquatic environment is much less than conventional pool cleaners.
In a first embodiment of a control algorithm 200 depicted in
Prior to step 202 of
Once the linear combination image with enhanced contrast is created, at step 204 of
In other embodiments, the threshold may be customizable, for example, the pool cleaner 20 may include a user interface or may be programmable through, for example, an application on a mobile device, whereby a user may select a threshold size. In still other embodiments, the user may input, for example, through a user interface, a pool surface type (e.g., vinyl, concrete, etc.) and the control algorithm 200 automatically sets the thresholds (and/or additional filters, weights, and/or other parameters used in other processing steps). In still other alternative embodiments, the control algorithm 200 may detect a pool surface type and/or environmental conditions and automatically adjusts the threshold and/or other parameters. In this manner, based on the particular aquatic environment, a user may select a different threshold. In this step, the binarization creates a binarized image, as seen in
Referring again to
Removal of smaller objects (to create the filtered image of
At step 208 of
Tracked objects are then evaluated at step 210 of
The result of the evaluating and removal (or retention) of various tracks or paths for tracked objects is depicted in
The step of determining which path or trajectory to take and thus, which candidate debris to remove next is evaluated at step 212 of
scorej=[Σif(Ai)g(di)]p(Δθj)
The path score is a mathematical formulation that determines the best path, trajectory, or route to take in order to collect candidate debris. The score is based in part on a current location of the pool cleaner 20 and the locations of the candidate debris in the field of view of the imaging device 110. The path score is calculated for each potential path. The control algorithm is continuously making these path score calculations (for each image that is taken and manipulated per steps 202 through 210 of
In the path score, the sum is over debris information for the current path, j. Each of the different components of the equation for determining a path score for a path will now be discussed in more detail.
f(Ai) represents a size and density of a candidate piece of debris, with Ai representing the size and density of the candidate piece of debris, α being a characteristic size scale, and k being a term that adjusts the priority of large debris. Where k≥1, k is a real number. For k=1, there will be a linear scaling of size information. For k>1, large objects will be favored more than linearly over small objects. For k>>1, large objects will be favored to the exclusion of small objects. α is a constant that is selected to be a typical characteristic size for debris removal. α is only relevant for k>1. For k>1, objects with an area <α will be penalized. Both k and α may be pre-set or may be customizable based on a particular application. In an exemplary embodiment, a may be about 5 millimeters (mm).
The size parameter α determines the objects that the imaging device 110 will detect or ignore. The parameter α measures the size (area) size (area) of an object on a 2D plane. This means that a “large” object from far away can be the same size as a “small” object up close. However, there is a threshold of when the pool cleaner recognizes an object up close, but will not correct its path if it is out of its frame of reference. In some embodiments, the threshold may be 5 millimeters (mm). Small objects (sand, pebbles, other non-visible objects to the naked eye, etc.) would generally need to be clumped together, in order to increase their size (area), to be recognized.
g(di) represents a distance from the pool cleaner to a candidate piece of debris, with the di being the distance to the candidate piece of debris, d0 being a minimum distance to penalize, and d0≥0 and β being a characteristic distance of candidate debris from the pool cleaner. In an exemplary embodiment, β may be about 4 feet, but could be much larger. The numerator (−max (0, di−d0)) restricts the numerator to 0 or a negative number.
If d<d0, g=1, there is no penalty. Otherwise, candidate debris at a larger distance will be penalized relative to candidate debris close to the pool cleaner. This is intended to strongly prioritize candidate debris that is immediately in front of (e.g., located adjacent to) the pool cleaner, which is always a desirable behavior. The relative penalty for candidate debris at a mid-range distance is determined by β. For β=∞, there is no penalty for candidate debris far away from the pool cleaner. In practice, a large number will suffice for ∞. For many values of β, there will be a regime of candidate debris close to the pool cleaner that are strongly prioritized, and a regime of candidate debris further out that are assigned roughly the same weight, independent of distance.
The size and density, f(Ai), and the distance, g(di), to each candidate debris is summed for each piece of candidate debris along a particular path.
p(Δθj) represents how smooth the motion is between the current path or trajectory and the potential path or trajectory to be taken (i.e., an angle deviation from the current path). In p(Δθj), Δ0 is a maximum angular deviation from the current trajectory such that there is no penalty applied for changing course, and pmin, is the minimum possible output value of p(Δθ). pmin≥0, and Δmax is the maximum possible angular deviation due to a change in trajectory, which is a physical constraint.
This model for p(Δθj) allows for not penalizing a range of changes to the current trajectory if there is no change to the current trajectory. If Δ0=0, then any change to the current trajectory will be penalized and will linearly proportional to the change. If Δ0=Δmax, then no penalty is applied to any change in trajectory.
After a search is performed over the space of possible paths or trajectories, the highest scoring path will be compared against a threshold score. If the best candidate path has a sufficiently high score, then the candidate path will be accepted and the pool cleaner 20 will change course accordingly (or remain on the same path, if the candidate path is the current path). As noted above, the pool cleaner 20 is continuously taking images and, thus, the steps 202-214 are continuously repeated to determine the best path or trajectory, as the best path or trajectory can change from image to image. Every time the pool cleaner takes a new image, the algorithm repeats steps 202 through 214 to determine the current best path (i.e., the path with the highest path score) and navigate to the next debris on that path. Before, during, or after removal of the candidate debris along the selected path, the pool cleaner 20 is again taking an image and repeating steps 202 through 214 to determine the current best path (i.e., the path with the highest path score) and determining to which debris the pool cleaner will next navigate. Steps 202 through 214 of
In summary, the control algorithms of the present invention assess all candidate paths or trajectories within the field of view of the camera 110 (or other imaging device) and determine a path or trajectory for the pool cleaner 20 based on the path score, which assesses the size and distance to debris along each path or trajectory and the smoothness of motion for each path or trajectory. Once a cleaning pathway has been determined, the controller 102 navigates the pool cleaner 20 along the pathway. In this manner, the largest and/or closest debris is generally removed first and the pool cleaner 20 continues to pick up the next largest and/or closest debris until the aquatic environment is free or nearly free of debris. The controller 102 navigates the pool cleaner 20 along one or more cleaning pathways until all of the debris is removed from the aquatic environment.
As noted above, the imaging device 110 is constantly taking images of the aquatic environment and retaining the images. The images may be stored within the memory 105 and/or the storage medium 106. In this manner, the control algorithm is constantly referencing historical data in the form of previous images (or frames) to compare the current image to one or more past images to assess the behavior of debris in those images. This is useful, for example, in the evaluation step 210 of
In some embodiments, the control algorithm may determine a singular pathway for removing the candidate debris from the aquatic environment. As noted above, the controller 102 will then navigate the pool cleaner 20 along the pathway until the aquatic environment is clean (all candidate debris is removed). In other embodiments, the control algorithm determines multiple potential pathways for removing candidate debris from the aquatic environment. The controller 102 will navigate the pool cleaner 20 along the pathway having the highest path score. In some embodiments, upon completing the pathway having the highest path score, the algorithm may reevaluate the aquatic environment to determine the next highest path score. The pool cleaner 20 may complete a pathway before beginning another pathway. In some embodiments, the algorithm determines a pathway having a higher path score while the pool cleaner 20 is navigating along a first pathway. The controller 102 may direct the pool cleaner 20 to begin a second pathway before a first pathway. This process may continue until all of the candidate debris is removed from the aquatic environment.
Use of the noted equation for calculating path scores for each candidate path (with candidate debris) is intended to address the following considerations:
Emphasizing large or dense debris: In some embodiments, f(A) may be tuned to relatively favor large candidate debris over small candidate debris. Clusters of candidate debris may be condensed into equivalent large objects or candidate debris for the purposes of evaluating path score.
Emphasizing close debris: In some embodiments, g(d) favors close candidate debris to a tunable extent. In other embodiments, there is no preference for close or far candidate debris, but there is never a preference for far candidate debris.
Smoothness of motion: In some embodiments, p(Δθ) offers a tunable penalty for changing course, including an option to not penalize a range about Δθ=0. In other embodiments, there is no penalty for changing course.
The control algorithm of
Using the scoring profiles described above, any example scoring strategy is determined for the potential paths (Path 1 and Path 2) depicted in
From Table 1, it can be seen that the path score sums and, thus, the trajectory or path taken is dependent upon the scoring profiles. For example, for the shortsighted scoring profile, Path 1 is chosen with a higher score of 7, for the shortsighted and greedy scoring profile, Path 1 is also chosen with a higher score of 49.5, for the mid-sighted and greedy scoring profile, Path 2 is chosen with a higher score of 225, and for the egalitarian scoring profile, Path 2 is selected with a higher score of 15.
Simulations
Simulations were created in a two-dimensional environment to determine what performance gains may be expected from a pool cleaner implementing the algorithm of
Simulated debris collection was also conducted on two different debris distributions with identical initial conditions. Referring to
In summary, the graphs of
The exponential fits of
The size of an aquatic environment (i.e., a pool) and a distribution of the debris within the aquatic environment are also factors in determining relative performance. For example, a large pool with a few scattered leaves is an idea case for the algorithm of
It will be appreciated by those skilled in the art that while the invention has been described above in connection with particular embodiments and examples, the invention is not necessarily so limited, and that numerous other embodiments, examples, uses, modifications and departures from the embodiments, examples and uses are intended to be encompassed by the claims attached hereto. The entire disclosure of each patent and publication cited herein is incorporated by reference, as if each such patent or publication were individually incorporated by reference herein. Various features and advantages of the invention are set forth in the following claims.
This application is a continuation application of U.S. patent application Ser. No. 16/109,544, filed Aug. 22, 2018, and further claims the benefit of, and priority to, U.S. provisional patent application No. 62/548,827, filed Aug. 22, 2017, which is incorporated herein by reference.
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Child | 17664828 | US |