scholarly journals Multi-Channel Sparsity Histogram based Particle Filter for Hand Tracking

Author(s):  
Xiaowei AN ◽  
quanquan Liang ◽  
Jie Tian
2007 ◽  
Vol 40 (7) ◽  
pp. 1958-1970 ◽  
Author(s):  
Caifeng Shan ◽  
Tieniu Tan ◽  
Yucheng Wei

2014 ◽  
Vol 22 (10) ◽  
pp. 2870-2878
Author(s):  
李东年 LI Dong-nian ◽  
周以齐 ZHOU Yi-qi

2017 ◽  
Vol 7 (1.1) ◽  
pp. 539
Author(s):  
P Praveen Kumar ◽  
P V.G.D. Prasad Reddy ◽  
P Srinivasa Rao

Machine translation of sign language is a complex and challenging problem in computer vision research. In this work, we propose to handle issues such as hands tracking, feature representation and classification for efficient interpretation of sign language from isolated sign videos. Hands tracking is attempted in a sequential format with one hand after the other by nullifying the effects of head movement using serial particle filter. The estimated hand positions in the video sequence are used to extract the hand portions to create a feature covariance matrix. This matrix is a compact representation of the hand features representing a sign. Adaptability of the feature covariance matrix is explored in developing relationships with new signs without creating a new feature matrix for individual signs. The extracted features are then applied to a neural network classifier which is trained with error backpropagation algorithm. Multiple experiments were conducted on a 181 class signs with 50 sentence formations with 5 different signers. Experimental results show the proposed sequential hand tracking is closer to ground truth. The proposed covariance features resulted in a classification accuracy of 89.34% with the neural network classifier.


Author(s):  
Selma Belgacem ◽  
Clément Chatelain ◽  
Achraf Ben-Hamadou ◽  
Thierry Paquet

2015 ◽  
Vol 2015 ◽  
pp. 1-15
Author(s):  
Weihua Liu ◽  
Yangyu Fan ◽  
Zuhe Li ◽  
Zhong Zhang

The task of human hand trajectory tracking and gesture trajectory recognition based on synchronized color and depth video is considered. Toward this end, in the facet of hand tracking, a joint observation model with the hand cues of skin saliency, motion and depth is integrated into particle filter in order to move particles to local peak in the likelihood. The proposed hand tracking method, namely, salient skin, motion, and depth based particle filter (SSMD-PF), is capable of improving the tracking accuracy considerably, in the context of the signer performing the gesture toward the camera device and in front of moving, cluttered backgrounds. In the facet of gesture recognition, a shape-order context descriptor on the basis of shape context is introduced, which can describe the gesture in spatiotemporal domain. The efficient shape-order context descriptor can reveal the shape relationship and embed gesture sequence order information into descriptor. Moreover, the shape-order context leads to a robust score for gesture invariant. Our approach is complemented with experimental results on the settings of the challenging hand-signed digits datasets and American sign language dataset, which corroborate the performance of the novel techniques.


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