The present invention relates generally to the field of elevator control, and more particularly to providing a video aided system that improves elevator dispatch, door control, access control, and integration with security systems.
Elevator performance is derived from a number of factors. To a typical elevator passenger, the most important factor is time. As time-based parameters are minimized, passenger satisfaction with the service of the elevator improves. The overall amount of time a passenger associates with elevator performance can be broken down into three time intervals.
The first time interval is the amount of time a passenger waits in an elevator hall for an elevator to arrive, hereafter the “wait time”. Typically, the wait time consists of the time beginning when a passenger pushes an elevator call button, and ending when an elevator arrives at the passenger's floor. Methods of reducing the wait time have previously been focused on reducing the response time of an elevator, either by using complex algorithms to predict passenger demand for service, or reducing the amount of time it takes for an elevator to be dispatched to the appropriate floor.
The second time interval is the “door dwell time” or the amount of time the elevator doors are open, allowing passengers to enter or leave the elevator. It would be beneficial to minimize the amount of time the elevator doors remain open, after all waiting passengers have entered or exited an elevator cab.
The third time interval is the “ride time” or amount of time a passenger spends in the elevator. If a number of passengers are riding on the elevator, then the ride time may also include stops on a number of intermediate floors.
A number of algorithms have been developed to minimize the wait time a passenger spends in the elevator hall. For instance, some elevator control systems use passenger flow data to determine which floors to dispatch elevators to, or park elevators at, depending on the time of day. Typically, requesting deployment of an elevator by pushing the call button results in a single elevator being dispatched to the requesting floor. In situations in which the number of passengers waiting on the requesting floor is greater than the capacity of the elevator, at least some passengers will have to wait until after the first elevator leaves, and then push the call button again to request a second elevator be sent to the requesting floor. This results in an increase in the overall wait time for at least some of the passengers. In a similar situation, a particular elevator cab carrying the maximum number of passengers may continue to stop on floors requesting elevator service. Because no new passengers can enter the elevator, the ride time of passengers on the elevator is increased unnecessarily, as is the wait time for passengers in the elevator hall.
Many elevator systems are also integrated with access control and security systems. The goal of these systems is to detect, and if possible, prevent unauthorized users from gaining access to secure areas. Because elevators act as access points to many locations within a building, elevator doors and cabs are well suited to perform access control. A number of schemes have been devised to defeat traditional access control systems, such as “card pass back” and “piggybacking”. Card pass back occurs when an authorized user (typically using a card swipe) provides his card to an unauthorized user, allowing both the authorized user and the unauthorized user to gain access to a secure area. Piggybacking occurs when an unauthorized user attempts to use an authorization provided by an authorized user to gain access to a secure area (either with or without the knowledge of the authorized user).
Therefore, it would be useful to design an elevator system that could minimize wait times experienced by passengers, while providing improved security or access control.
In the present invention, a video monitoring system provides passenger data to an elevator control system. The video monitoring system includes a video processor connected to receive video input from at least one video camera mounted to monitor the area outside of elevator doors. The video processor uses sequential video images provided by the video camera to track objects outside of the elevator doors. Based on the video input received, the video processor calculates a number of parameters associated with each tracked object. The parameters are provided to the elevator control system, which uses the parameters to efficiently operate the dispatch of elevator cabs and control of elevator door opening and closing.
In both
Input from elevator call button 22 notifies control system 24 of the presence of a passenger at elevator doors 20, awaiting elevator service. These inputs are common to most elevator systems, in which a passenger reaches elevator doors 20 and pushes external call button 22 to request elevator service at his/her floor location. In response, control system 24 dispatches elevator cab 18 to the appropriate floor. Once inside elevator cab 18, the passenger pushes a button on control panel 23 corresponding with the desired floor location, and control system 24 dispatches elevator cab 18 to the desired floor.
Video processor 16 provides passenger data to control system 24, providing control system 24 with additional information regarding elevator passengers. Throughout this application, the term ‘object’ refers generically to anything not identified as background by a video processor. Typically, ‘objects’ are the focus of video processing algorithms designed to provide useful information with respect to a video camera's field of view. The term ‘passenger’ refers generically to objects (including people, carts, luggage, etc.) that are or may potentially become elevator passengers. In many cases, objects are in fact passengers. However, as discussed with respect to
Control system 24 uses passenger data provided by video processor 16, in conjunction with data provided by elevator cab 18 and elevator call button 22, to improve performance (e.g., wait time, door dwell time, and ride time) of elevator system 10. For example, early detection of passengers by video processor 16 allows control system 24 to dispatch elevator cab 18 to a particular floor prior to the passenger pushing call button 22.
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Based on video input provided by video camera 12 (and video camera 32 as shown in
To illustrate the usefulness of each of these parameters, they are described below with respect to passengers P1, P2, and P3 shown in
Estimated Arrival Time, Probability of Arrival, and Covariance
Estimated arrival time is a prediction of the amount of time it will take an identified object to arrive at a specified location, for example, elevator doors 20. Probability of arrival is the likelihood that an identified object will arrive at a particular location, for example, elevator doors 20. Covariance is a statistical measure of the confidence associated with the estimated arrival time and probability of arrival. Each of these three parameters are closely related to one another, and are therefore described together.
Based on object parameters (e.g., location, speed, direction, etc.) calculated with respect to centroids 35t, 35t-1, 35t-2, and 35t-3, video processor 16 determines the predicted path of the object shown by line 36. The predicted path shown by line 36 defines the most probable future location of the tracked object. Based on the object parameters, including current location of the tracked object (i.e., centroid 35t), and distance to a location determined by the predicted path, video processor 16 defines the estimated time at which the tracked object will reach a particular point in the x-y coordinate system. The estimation of arrival time may use more complicated models of expected object motion, such as anticipating an object slowing down as it approaches the elevator call button 22 or elevator door 20. Thus, the estimated time of arrival is the most likely time at which the tracked object reaches the x-y coordinate defining elevator door 33. Likewise, the probability of arrival is the probability that the tracked object will travel to the x-y coordinate defining elevator door 33.
In one embodiment, the covariance distribution is calculated using an Extended Kalman Filter (EKF), and is based on the following factors, including: target dynamics, state estimates, uncertainty propagation, and statistical stationarity of the process. Target dynamics includes a model of how a tracked object is allowed to move, including physical restraints placed on a tracked object with respect to surroundings (i.e., a tracked object is not-allowed to walk through a pillar located in the field of view). State estimates include object parameters (e.g., location, speed, direction) associated with an object at previous points in time. That is, if a tracked object changes direction a number of times indicated by previous state parameters, the confidence in the tracked object moving to a particular location decreases. The uncertainty propagation takes into account known uncertainties in the measurement process and variation of data. Statistical stationarity of the process assumes that past statistical assumptions made regarding the underlying process will remain the same.
Graphically, the covariance distribution illustrates the confidence associated with calculations regarding where the tracked object will travel as well as when the tracked object will arrive at particular location. A profile of the covariance distribution taken along axis 38 provides the probability of where the tracked object will be in the future. The most probable location of the tracked object is defined by the peak of covariance distribution. As the predicted path of the tracked object changes (as shown in
The confidence associated with a particular estimation (e.g., arrival, time) is defined by the sharpness of the covariance distribution. That is, a flat distribution indicates low confidence in a particular estimation, Whereas a sharp peak indicates a high level of confidence in a particular estimation. For example, as shown in
For passengers moving away from elevator doors 20, such as passenger P3, the covariance distribution associated with passenger P3 reaching elevator doors 33 indicates a decreased confidence (flat distribution) in passenger P3 arriving at elevator doors 20, as well as passenger P3 arriving at elevator doors 20 at a particular time.
When a passenger (such as passenger P1) reaches elevator doors 20, the passenger typically stops moving. Because estimated arrival time covariance is based on location, speed, and direction, a passenger that is no longer in motion (i.e., velocity=0, direction=undetermined) can cause the covariance calculation to show a loss in confidence (decreased sharpness) in an estimated arrival time. To solve this problem, a region R2 is defined around elevator doors 20, as shown in
Providing the mean estimated arrival time, probability of arrival and the estimated arrival time covariance allows control system 24 to dispatch elevator 18 cab to a floor prior to a passenger pushing call button 22 (for instance, in response to estimated arrival time, probability of arrival, and covariance calculations associated with passenger P2). Furthermore, control system 24 can determine when to close elevator doors 20 based on whether additional passengers are predicted to arrive at elevator doors 20. For instance, if video processor 16 determines with a high level of confidence that a passenger (e.g., passenger P2) will reach elevator doors 20 within a defined amount of time, then control system 24 causes elevator doors 20 to remain open for an extended period of time. The opposite is also true, if video processor 16 does not determine with a high level of confidence estimated arrival times for other passengers (e.g., passenger. P3), control system 24 causes elevator doors 20 to close, decreasing the door dwell time and waiting time of passengers already in elevator cab 18.
The prediction of the future location of moving objects is described in further detail, e.g., by the following publications: Madhaven R., and Schlendoff, C., “Moving Object Prediction for Off-road Autonomous Navigation”, Proc, SPIE Aerosense Conf. Apr. 21-25, 2003, Orlando, Fla.; and Ferryman, J. M., Maybank, S. J., and Worral, A. D., “Visual Survelliance For Moving Vehicles”, Intl. J. of Computer Vision, v.37, n.2, pp. 187-197, June 2000. These articles describe predicting the future state (time and location) of an object as well as associated uncertainties (covariances) using algorithms such as Extended Kalman Filters (EKFs) and Hidden Markov Models (HMMs).
Video processor 16 also provides control system 24 with classification data regarding objects tracked within the field of view of video camera 12. For example, video processor 16 is capable of distinguishing between different objects, such as people, carts, animals, etc. This provides control system 24 with data regarding whether an object is a potential elevator passenger or not, and also allows control system 24 to provide special treatment for particular objects. For instance, if video processor 16 determines that passenger P2 is a person pushing a cart, both the person and the cart would be considered potential passengers, since most likely the person would push the cart into elevator cab 18. If video processor 16 determines that passenger P2 is an unaccompanied dog, then video processor determines that passenger P2 is not a potential elevator passenger. Therefore, control system 24 would not cause elevator cab 18 to be dispatched, regardless of the location or direction of the passenger P2. In one embodiment, video processor 16 would not provide control system 24 with passenger data associated with objects classified as non-passengers.
Classification of an object allows control system 24 to take into account special circumstances when causing elevator doors 20 to open and close. For instance, if video processor 16 determines a person in a wheelchair is approaching elevator doors 20, it may cause elevator doors 20 to remain open for a longer interval.
An example of object classification is described in the following article: Dick, A. R., and Brooks, M. J, “Issues in Automated Visual Survelliance”, Proc 7th Intl. Conf. on Digital Image Computing: Techniques and Applications (DICTA 2003), pp. 195-204, Dec. 10-12, 2003, Sydney, Australia; and Madhaven, R., and Schlendoff, C., “Moving Object Prediction for Off-road Autonomous Navigation”, Proc, SPIE Aerosense Conf. Apr. 21-25, 2003, Orlando, Fla.
Video processor 16 also provides control system 24 with an estimated floor area to be occupied by each tracked object. Depending on the orientation of video camera 12, different algorithms can be used by video processor 16 to determine the floor area to be occupied by a particular object. If video camera 12 is mounted above the area outside of elevator doors 20, then video processor 16 can make use of simple pixel mapping algorithm to determine the estimated floor area to be occupied by a particular object. If video camera 12 is mounted in a different orientation, probability algorithms may be used to estimate floor area based on detected features of the object (e.g., height, shape, etc.). In another embodiment, multiple cameras are employed to provide multiple vantage points of the area outside elevator doors 20. The use of multiple cameras requires mapping between each of the cameras to allow video processor 16 to accurately estimate floor area required by each tracked object.
Providing estimated floor area occupied by tracked objects allows control system 24 to determine whether additional elevator cabs (assuming more than one elevator cab is employed) are required to meet passenger demand. For instance, if video processor 16 determines that passengers P1 and P2 are likely elevator passengers, but that passenger P1 is pushing a cart that will occupy the entire available floor space in elevator cab 18, then control system 24 will cause a second elevator cab to be dispatched for passenger P2.
In another embodiment, control system 24 receives further input regarding available floor space within elevator cab 18 (for instance, if video camera 32 is mounted within elevator cab 18 as shown in
An example of area estimation is described in the following article: P. Merkus, X. Desurmont, E. G. T Jaspers, R. G. J. Wijnhoven, O. Caignart, J-F Delaigle, and W. Favoreel, “Candela—Integrated Storage, Analysis and Distribution of Video Content for Intelligent Information Systems.” http://www.hitech-projects.com/euprojects/candela/pr/ewimtfinal2004.pdf.
Video processor 16 also provides control system 24 with information regarding number of passengers waiting for elevator cab 18. As discussed above, when a tracked object crosses into region R2, video processor 16 assumes that the tracked object will in fact become an elevator passenger. For each tracked object that enters region R2 on an appropriate trajectory and not from within elevator cab 18, video processor 16 increments the number of waiting passengers parameter provided to control system 24. Providing this parameter to control system 24 allows control system 24 to determine whether to dispatch additional elevator cabs to a particular floor. The number of waiting passengers parameter may also be used by control system 24 to determine when to close elevator doors 24. For instance, if video processor 16 determines that passengers P1 and P2 are waiting for elevator cab 18, control system 24 will cause door control 28 to keep elevator doors 20 open until both passengers are detected entering elevator cab 18.
Video processor 16 receives authentication data from access control system 14, and provides authorization data associated with each tracked object to control system 24. Video processor 16 may also provide authorization data associated with each tracked object to access control system 14, allowing access control system 14 to detect or prevent detected security breaches.
Depending on the type of access control system 14 in place, authorization may occur prior to a passenger reaching elevator doors 22, at elevator doors 22, or within elevator cab 18. When a passenger becomes authorized, either to enter the elevator or to enter a particular floor, video processor 16 associates the authorization received from access control system 14 with the particular passenger. Depending on the type of access control system in place, control system 24 uses object ID provided by video processor 16 to prevent or alert security system 30 to detected security breaches, such as “piggybacking” and “card pass-back.” By unambiguously associating each particular passenger with an authorization status, control system 24 is able to detect and respond to potential security breaches.
At step 46, if tracking of an object is confirmed, then video processor 16 calculates object parameters associated with the tracked object at step 48. Although not exclusive, object parameters calculated by video processor 16 include position, velocity, direction, size, classification, and acceleration of the tracked object. At step 50, object classification determined at step 48 is used to determine whether an object is a potential passenger. For instance, an object identified as an unaccompanied dog would not be classified as a potential passenger. If video processor 16 determines that an object is not a potential passenger, it will continue to monitor and track the object (at step 48), but will not provide passenger data parameters associated with the object to control system 24.
If video processor 16 determines than an object is a potential passenger, then at step 52, video processor 16 calculates passenger data including estimated arrival time and probability of arrival parameters such as covariance. As discussed above, estimated arrival time and probability of arrival (as well as any other passenger data parameters) are determined by video processor 16 based on object parameters calculated at step 48 by video processor 16. At step 54, video processor 16 provides control system 24 with passenger data (e.g., estimated arrival time, covariance, probability of arrival, size, and classification, etc.). At step 56, video processor 16 checks whether the estimated arrival time of a passenger equals zero. When the estimated arrival of a passenger equals zero (e.g., tracked object enters lo region R2), video processor 16 determines that the passenger is waiting for the elevator, and increments the number of passengers currently waiting for the elevator at step 58. At step 60, video processor 16 provides control system 24 with the number of passengers waiting outside elevator doors 20. If the estimated arrival time is not equal to zero, then video processor 16 will continue tracking and calculating object parameters at step 48.
Regardless of the access control scenario, the first step in providing access control is determining authorization of a passenger.
In the remote authorization method, passengers are remotely identified as authorized as they approach elevator doors 20. A number of methods exist for remotely identifying users as authorized. For example, in one embodiment, RFID tags are used to identify objects or passengers as authorized. In the elevator door authorization method 66b, authorization is provided at elevator doors 20. This method may make use of swipe cards, voice recognition, or keypad entry in determining authorization of a passenger. In elevator cab authorization method 66c, authorization is provided inside of elevator cab 18, and may make use of swipe cards, voice recognition or keypad entry.
If remote authorization 66a or elevator door authorization 66b is employed, then access control system 14 provides authorization data to video processor 16 at step 68a, allowing video processor 16 to unambiguously associate authentication to a particular passenger located outside of elevator cab 18. If elevator cab authentication 66c is employed, then access control system 14 provides authorization data to video processor 16 at step 68b, allowing video processor 16 to unambiguously associate authentication to a particular passenger within elevator cab 18. In this embodiment, it would be beneficial to have a video camera within elevator cab 18 (as shown in
If authorization is determined outside of elevator cab 18 (using either the first or second method) then at step 70 video processor 16 monitors or tracks passengers (authorized and unauthorized) as they enter elevator cab 18.
Once the passengers are in elevator cab 18, at step 72 control system 24 uses the authorization data provided by video processor 16 (regardless of the method employed to obtain authorization data) to detect security breaches, such as tailgating. In scenarios in which elevator cab 18 only travels to secure floors, at the time of door closing each passenger within elevator cab 18 must be unambiguously identified with a particular authorization. If an unauthorized passenger is located within elevator cab 18 at the time of door closing, control system 24 alerts security system 30 at step 74. In one embodiment, control system 24 may act as an airlock, by causing elevator doors 20 to remain closed until security arrives. In other embodiments, control system 24 prevents elevator cab 18 from being dispatched to a secure floor until the unauthorized user leaves elevator cab 18. In scenarios in which some floors accessed by elevator cab 18 are secure, and other are not, then passengers must be monitored within elevator cab 18 to determine if an unauthorized user has gotten off on an authorized floor. This can be done with video surveillance within elevator cab 18 (as shown in
Although the present invention has been described with reference to preferred embodiments, workers skilled in the art will recognize that changes may be made in form and detail without departing from the spirit and scope of the invention.
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/US2006/001376 | 1/12/2006 | WO | 00 | 6/26/2008 |