Human Activity Detection from RGBD Images
Jaeyong Sung, Colin Ponce, Bart Selman, Ashutosh Saxena
- Year
- 2011
- Citations
- 273
Abstract
Being able to detect and recognize human activities is important for making personal assistant robots useful in performing assistive tasks. The challenge is to de-velop a system that is low-cost, reliable in unstructured home settings, and also straightforward to use. In this paper, we use a RGBD sensor (Microsoft Kinect) as the input sensor, and present learning algorithms to in-fer the activities. Our algorithm is based on a hierar-chical maximum entropy Markov model (MEMM). It considers a person’s activity as composed of a set of sub-activities, and infers the two-layered graph struc-ture using a dynamic programming approach. We test our algorithm on detecting and recognizing twelve dif-ferent activities performed by four people in different environments, such as a kitchen, a living room, an of-fice, etc., and achieve an average performance of 84.3% when the person was seen before in the training set (and 64.2 % when the person was not seen before).
Keywords
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