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Hierarchies of Self-Organizing Maps for action recognition
Institution:1. Department of Control and Automation Engineering, National Korea Maritime and Ocean University, Busan 49112, South Korea;2. School of IT Information and Control Engineering, Kunsan National University, Kunsan 54150, South Korea;1. Department of Mathematics, Sungkyunkwan University, Suwon 440–746, Republic of Korea;2. Department of Mathematics, Anna University Regional Campus, Coimbatore 641046, India;1. Medical IT Convergence Research Section, Electronics and Telecommunications Research Institute (ETRI), Daegu 42994, Republic of Korea;2. School of Electronic and Electrical Engineering, Kyungpook National University, Daehak-ro 80, Republic of Korea;3. Smart Mobility Research Section, Electronics and Telecommunications Research Institute (ETRI), Daegu, Republic of Korea;4. Cyber Physical Systems & Control Laboratory, School of Electronic and Electrical Engineering, Kyungpook National University, Daehak-ro 80, Republic of Korea
Abstract:We propose a hierarchical neural architecture able to recognise observed human actions. Each layer in the architecture represents increasingly complex human activity features. The first layer consists of a SOM which performs dimensionality reduction and clustering of the feature space. It represents the dynamics of the stream of posture frames in action sequences as activity trajectories over time. The second layer in the hierarchy consists of another SOM which clusters the activity trajectories of the first-layer SOM and learns to represent action prototypes. The third- and last-layer of the hierarchy consists of a neural network that learns to label action prototypes of the second-layer SOM and is independent – to certain extent – of the camera’s angle and relative distance to the actor. The experiments were carried out with encouraging results with action movies taken from the INRIA 4D repository. In terms of representational accuracy, measured as the recognition rate over the training set, the architecture exhibits 100% accuracy indicating that actions with overlapping patterns of activity can be correctly discriminated. On the other hand, the architecture exhibits 53% recognition rate when presented with the same actions interpreted and performed by a different actor. Experiments on actions captured from different view points revealed a robustness of our system to camera rotation. Indeed, recognition accuracy was comparable to the single viewpoint case. To further assess the performance of the system we have also devised a behavioural experiments in which humans were asked to recognise the same set of actions, captured from different points of view. Results form such a behavioural study let us argue that our architecture is a good candidate as cognitive model of human action recognition, as architectural results are comparable to those observed in humans.
Keywords:Self-Organizing Map  Neural network  Action recognition  Hierarchical models  Intention understanding
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