Title :
Static hand gesture recognition using stacked Denoising Sparse Autoencoders
Author :
Kumar, Vipin ; Nandi, Gora Chand ; Kala, Rahul
Author_Institution :
Robot. & Artificial Intell. Lab., Indian Inst. of Inf. Technol., Allahabad, India
Abstract :
With the advent of personal computers, humans have always wanted to communicate with them in either their natural language or by using gestures. This gave birth to the field of Human Computer Interaction and its subfield Automatic Sign Language Recognition. This paper proposes the method of automatic feature extraction of the images of hand. These extracted features are then used to train the Softmax classifier to classify them into 20 classes. Five stacked Denoising Sparse Autoencoders (DSAE) trained in unsupervised fashion are used to extract features from image. The proposed architecture is trained and tested on a standard dataset [1] which was extended by adding random jitters such as rotation and Gaussian noise. The performance of the proposed architecture is 83% which is better than shallow Neural Network trained on manual hand-engineered features called Principal Components which is used as a benchmark.
Keywords :
feature extraction; human computer interaction; image classification; image denoising; neural nets; principal component analysis; sign language recognition; DSAE; automatic feature extraction; automatic sign language recognition; human computer interaction; manual hand-engineered features; principal components; random jitters; shallow neural network; softmax classifier training; stacked denoising sparse autoencoders; static hand gesture recognition; Cost function; Feature extraction; Gesture recognition; Neurons; Noise reduction; Training; Vectors; Autoencoders; Deep learning; Static hand gesture recognition;
Conference_Titel :
Contemporary Computing (IC3), 2014 Seventh International Conference on
Conference_Location :
Noida
Print_ISBN :
978-1-4799-5172-7
DOI :
10.1109/IC3.2014.6897155