Motion Feature Extraction Using Second-order Neural Network and Self-organizing Map for Gesture Recognition
スポンサーリンク
概要
- 論文の詳細を見る
We propose a neural preprocess approach for video-based gesture recognition system. Second-order neural network (SONN) and self-organizing map (SOM) are employed for extracting moving hand regions and for normalizing motion features respectively. The SONN is more robust to noise than frame difference technique. Obtained velocity feature vectors are translated into normalized feature space by the SOM with keeping their topology, and the transition of the activated node in the topological map is classified by DP matching. The topological nature of the SOM is quite suited to data normalization for the DP matching technique. Experimental results show that those neural networks effectively work on the gesture pattern recognition. The SONN shows its noise reduction ability for noisy backgrounds, and the SOM provides the robustness to spatial scaling of input images. The robustness of the SOM to spatial scaling is based on its robustness to velocity scaling.
- Information and Media Technologies 編集運営会議の論文
著者
-
Takefuji Yoshiyasu
Faculty Of Environmental Information Keio University
-
Aoba Masato
Takefuji Laboratory Keio Research Institute At Sfc
関連論文
- Mixed Pattern Segmentation by Using Chaotic Neural Networks
- Motion Feature Extraction Using Second-order Neural Network and Self-organizing Map for Gesture Recognition
- Euro Banknote Recognition System Using a Three-layered Perceptron and RBF Networks
- Relation between Brain Activity of fMRI and NIRS image at the Rehabilitation Training
- Motion Feature Extraction Using Second-order Neural Network and Self-organizing Map for Gesture Recognition
- Motion Feature Extraction Using Second-order Neural Network and Self-organizing Map for Gesture Recognition