ICRA 2012 Paper Abstract

Close

Paper TuC08.2

AL AZRAI, RAMI (Purdue University), Lee, C. S. George (Purdue University)

A Connectionist-Based Approach for Human Action Identification

Scheduled for presentation during the Regular Session "Human Detection and Tracking" (TuC08), Tuesday, May 15, 2012, 14:45−15:00, Meeting Room 8 (Wacipi)

2012 IEEE International Conference on Robotics and Automation, May 14-18, 2012, RiverCentre, Saint Paul, Minnesota, USA

This information is tentative and subject to change. Compiled on June 22, 2018

Keywords Recognition

Abstract

This paper presents a hierarchal, two-layer, connectionist-based human-action recognition system (CHARS) as a first step towards developing socially intelligent robots. The first layer is a K-nearest neighbor (K-NN) classifier that categorizes human actions into two classes based on the existence of locomotion, and the second layer consists of two multi-layer recurrent neural networks that distinguish between subclasses within each class. A pyramid of histograms of oriented gradients (PHOG) descriptor is proposed for extracting local and spatial features. The PHOG descriptor reduces the dimensionality of input space drastically, which results in better convergence for the learning and classification processes. Computer simulations were conducted to illustrate the performance of the proposed CHARS and the role of temporal factor in solving this problem. A widely used KTH human-action database and the human-action dataset from our lab were utilized for performance evaluation. The proposed CHARS was found to perform better than other existing human-action recognition methods and achieved a 95.55% recognition rate.

 

 

Technical Content © IEEE Robotics & Automation Society

This site is protected by copyright and trademark laws under US and International law.
All rights reserved. © 2002-2018 PaperCept, Inc.
Page generated 2018-06-22  21:15:05 PST  Terms of use