This application claims the priority benefit of Taiwan Patent Application Serial Number 101125964, filed on Jul. 18, 2012, the full disclosure of which is incorporated herein by reference.
1. Field of the Disclosure
This disclosure generally relates to a gesture recognition method and apparatus and, more particularly, to a gesture recognition method and a gesture recognition apparatus with improved background suppression.
2. Description of the Related Art
Generally speaking, gravity centers P1-P7 of an object are calculated according to the brightness and positions of pixels of the object and served as the position of the object, and moving vectors V1-V6 at different times are also calculated. Details of calculating the gravity centers may be referred to U.S. Publication No. 2013/0265230 assigned to the same assignee as the present application. However from
In other words, if the hand of the user is waved from left to right, the gravity centers P1-P7 of the object will like the track shown in
The present disclosure provides a gesture recognition method that may adjust moving vectors according to the brightness or size of the object image so as to reduce the background interference and to improve the gesture recognition performance.
The present disclosure further provides a gesture recognition apparatus that may utilize the method mentioned above so as to improve the gesture recognition performance.
Other objects and advantages of the present disclosure will become more apparent from the technical features of the present disclosure.
To achieve one, a part of or all objects above or other objects, one embodiment of the present disclosure provides a gesture recognition method with improved background suppression including following steps. First, a plurality of images are sequentially captured. Next, a position of at least one object in each of the plurality of images is calculated to respectively obtain a moving vector of the object at different times. Then, an average brightness of the object in each of the plurality of images is calculated. Finally, magnitudes of the moving vectors of the object at different times are respectively adjusted according to the average brightness of the object in each of the plurality of images.
In one aspect, the magnitudes of the moving vectors are positively correlated to the average brightness of the object in each of the plurality of images. In one aspect, when the average brightness of the object in each of the plurality of images is larger, a weighting of adjusting magnitudes of the moving vectors of the object at different times becomes higher. In one aspect, the weighting may be a multinomial.
In one aspect, each of the plurality of images includes at least a background image or an object image. In one aspect, the position of at least one object in each of the plurality of images is a gravity center of at least one of the background image and the object image.
In one aspect, the above method further includes the following steps. First, an average size of the object in each of the plurality of images is calculated. Next, magnitudes of the moving vectors of the object at different times are respectively adjusted according to the average brightness and the average size of the object in each of the plurality of images.
In one aspect, the above method further includes the step of obtaining a motion track of the object according to the adjusted magnitudes of the moving vectors of the object at different times.
The present disclosure further provides a gesture recognition method with improved background suppression including following steps. First, a plurality of images are sequentially captured. Next, a position of at least one object in each of the plurality of images is calculated to respectively obtain a moving vector of the object at different times. Then, an average size of the object in each of the plurality of images is calculated. Finally, magnitudes of the moving vectors of the object at different times are respectively adjusted according to the average size of the object in each of the plurality of images.
The present disclosure further provides a gesture recognition method with improved background suppression including following steps. First, a plurality of images are sequentially captured. Next, a position of at least one object in each of the plurality of images is calculated to respectively obtain a moving vector of the object at different times. Then, a distance of the object in each of the plurality of images is calculated. Finally, magnitudes of the moving vectors of the object at different times are respectively adjusted according to the distance of the object in each of the plurality of images.
In one aspect, the step of calculating a distance of the object in each of the plurality of images is to provide a distance measurement system to measure a distance of the object with respect to an image sensor at different times.
The present disclosure further provides a gesture recognition apparatus including an image sensor and a processing unit. The image sensor is configured to sequentially capture a plurality of images. The processing unit is configured to perform following steps. First, a position of at least one object in each of the plurality of images is calculated to respectively obtain a moving vector of the object at different times. Then, magnitudes of the moving vectors of the object at different times are respectively adjusted according to information of at least one of an average brightness, an average size and a shape of the object in each of the plurality of images.
As mentioned above, the gesture recognition method and the gesture recognition apparatus of the present disclosure may respectively adjust the moving vectors at different times according to the average brightness of the object at different times so as to avoid the error of the gesture recognition mechanism. In addition, in the present disclosure it is also able to respectively adjust the moving vectors at different times according to the average size or shape of the object at different times so as to achieve the above object. Furthermore, in the present disclosure it is further able to respectively adjust the weighting of the moving vectors at different times according to the distance of the object from the image sensor so as to avoid the error of the gesture recognition mechanism.
Other objects, advantages, and novel features of the present disclosure will become more apparent from the following detailed description when taken in conjunction with the accompanying drawings.
The above or other technical contents, characteristics and effects according to the present disclosure will become more apparent from the following detailed description of a preferred embodiment in conjunction with the accompanying drawings. It is to be understood that terms of direction used herein, such as upward, downward, leftward, rightward, forward and backward, are only used for reference but not used to limit the present disclosure.
Referring to
In calculation, positions of the object are generally obtained by calculating the gravity centers P1-P7 of the object according to the average brightness of the object, and the moving vectors V1-V6 at different times are also calculated. However when the images captured by the image sensor 210 contain background brightness (i.e. at least a background image is included in the images captured by the image sensor 210), the gravity centers of the object after and previous to the waving of hand may be at the same location, such as the gravity centers P1 and P7 of the object shown in
Generally speaking, when the user waves his or her hand, the position of the hand is closer to the image sensor 210 than the body. Therefore, the image brightness of the hand is brighter than that of the background. In other words, in this embodiment the average brightness of the object image is served as a weighting to adjust the moving vectors V1-V6 mentioned above so as to obtain the adjusted track of the object motion and to obtain the gravity centers P21-P27 according to the adjusted moving vectors V21-V26 as shown in
In this embodiment, magnitudes of the adjusted moving vectors V21-V26 are positively correlated to the average brightness of the object in each of the plurality of images, wherein when the average brightness of the object is larger, a weighting of adjusting magnitudes of the moving vectors V21-V26 of the object at different times becomes higher; and the weighting may be a multinomial. Specifically speaking, when the object is brighter, the adjusted moving vector is larger; whereas when the object is darker, the adjusted moving vector is smaller. In this manner, the new created gravity centers P21-P27 are different from the original gravity centers P1-P7 as shown in
It should be mentioned that when the motion of the user's hand is a rotation gesture, the motion track is substantially at the same plane and thus the image brightness of the object is substantially identical. Furthermore, comparing to the waving gesture from left to right or from right to left, in the rotation gesture the condition that an object suddenly appears and approaches to the image sensor 210 and then leaves away from the image sensor 210 generally does not happen. Therefore, weighting the moving vector based on the brightness in this embodiment substantially does not affect the recognition of the rotation gesture.
It should be mentioned that in the above embodiment the average brightness of the object image is taken as an example to adjust the weighting of the moving vectors V1-V6. However, in another embodiment the weighting of the moving vectors V1-V6 may be adjusted according to the size of the object image as shown by the adjusted motion track in
Specifically speaking, when the hand of the user is waved from left to right, the hand generally approaches to the image sensor 210 at first and then leaves away from the image sensor 210. Therefore, in this embodiment the size of the object image is served as a weighting to adjust the moving vectors V1-V6 mentioned above so as to obtain the adjusted track of the object motion and to obtain the gravity centers P31-P37 according to the adjusted moving vectors V31-V36 as shown in
Similarly, when the motion of the user's hand is a rotation gesture, the motion track is substantially at the same plane and thus the image size of the object is substantially identical. Furthermore, comparing to the waving gesture from left to right or from right to left, in the rotation gesture the condition that an object suddenly appears and approaches to the image sensor 210 and then leaves away from the image sensor 210 generally does not happen. Therefore, weighting the moving vector based on the object size in this embodiment substantially does not affect the recognition of the rotation gesture. It should be mentioned that in this embodiment the weighting of the moving vectors V1-V6 may be adjusted according to both the average brightness and the size.
It should be mentioned that when the motion of the user's hand is a rotation gesture, the motion track is substantially at the same plane and thus distances of the object from the image sensor 210 at different times are substantially identical. Furthermore, comparing to the waving gesture from left to right or from right to left, in the rotation gesture the condition that an object suddenly appears and approaches to the image sensor 210 and then leaves away from the image sensor 210 generally does not happen. Therefore, weighting the moving vector based on the distance of the object from the image sensor 210 at different times in this embodiment substantially does not affect the recognition of the rotation gesture.
As mentioned above, the gesture recognition method and the gesture recognition apparatus of the present disclosure at least have the merits below. First, in the present disclosure it is able to respectively adjust the moving vectors at different times according to the average brightness of the object at different times so as to avoid the error of the gesture recognition mechanism. In addition, in the present disclosure it is also able to respectively adjust the moving vectors at different times according to the average size or shape of the object at different times so as to achieve the same object. Furthermore, in the present disclosure it is further able to respectively adjust the weighting of the moving vectors at different times according to the distance of the object with respect to the image sensor so as to avoid the error of the gesture recognition mechanism.
Although the disclosure has been explained in relation to its preferred embodiment, it is not used to limit the disclosure. It is to be understood that many other possible modifications and variations can be made by those skilled in the art without departing from the spirit and scope of the disclosure as hereinafter claimed. Furthermore, any embodiment or claim of the present invention is not necessary to achieve all objects, advantages, and novel features disclosed herein. Meanwhile, the summary and title are only for searching of patent documents but not to limit the present disclosure.
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