Multi-Sensor Fusion Based Robot Self-Activity Recognition
Dingsheng Luo, Yang Ma, Xihong Wu
- 发表年份
- 2018
- 引用次数
- 4
摘要
Robots play more and more important roles in our daily life. To better complete assigned tasks, it is necessary for the robots to have the ability to recognize their self-activities in real time. To perceive the environment, robots usually equipped with rich sensors, which can be used to recognize their self-activities. However, the intrinsics of the sensors such as accelerometer, servomotor and gyroscope may have significant differences, individual sensor usually exhibits weak performance in perceiving the environment. Therefore, multi-sensor fusion becomes a promising technique so that to achieve better performance. In this paper, facing the issue of robot self-activity recognition, we propose a framework to fuse information from multiple sensory streams. Our framework takes Recurrent Neural Network(RNN) that uses Long Short-Term Memory(LSTM) units to model temporal information conveyed in multiple sensory streams. In the architecture, a hierarchy structure is used to learn the sensor-specific features, a shared layer is used to fuse the features extracted from multiple sensory streams. We collect a dataset on PKU-HR6.0 robot to evaluate the proposed framework. The experiment results demonstrate the effectiveness of the proposed framework.
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