Hand
gesture recognition is challenging task in machine vision due to similarity
between inter class samples and high amount of variation in intra class
samples. The gesture recognition independent of light intensity, independent of
color has drawn some attention due to its requirement where system should
perform during night time also. This paper provides an insight into dynamic
hand gesture recognition using depth data and images collected from time of
flight camera. It provides user interface to track down natural gestures. The
area of interest and hand area is first segmented out using adaptive
thresholding and region labeling. It is assumed that hand is the closet object
to camera. A novel algorithm is proposed to segment the hand region only. The
noise due to ToF camera measurement is eliminated by preprocessing algorithms.
There are two algorithms which we have proposed for extracting the hand
gestures features. The first algorithm is based on computing the region
distance between the fingers and second one is about computing the shape
descriptor of gesture boundary in radial fashion from the centroid of hand
gestures. For matching the gesture the distance between two independent regions
is computed for every row and column. Same process is repeated across the
columns. The number of total region transitions are computed for every row and
column. This number of transitions across rows and columns forms the feature
vector. The proposed solution is easily able to deal with static and dynamic
gestures. In case of second approach we compute the distance between the
gesture centroid and shape boundaries at various angles from 0 to 360 degrees.
These distances forms the feature vector. Comparison of result shows that this
method is very effective in extracting the shape features and competent enough
in terms of accuracy and speed. The gesture recognition algorithm mentioned in
this paper can be used in automotive infotainment systems, consumer electronics
where hardware needs to be cost effective and the response of the system should
be fast enough.
Author(s) Details
Dr. Netra Lokhande
School of Computer Engineering and Technology, MIT World Peace University, Kothrud, Pune, India
View Book :- http://bp.bookpi.org/index.php/bpi/catalog/book/170
Author(s) Details
Dr. Netra Lokhande
School of Computer Engineering and Technology, MIT World Peace University, Kothrud, Pune, India
View Book :- http://bp.bookpi.org/index.php/bpi/catalog/book/170
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