Abstract

In this work, we present a multiclass hand posture classifier useful for human-robot interaction tasks. The proposed system is based exclusively on visual sensors, and it achieves a real-time performance, whilst detecting and recognizing an alphabet of four hand postures. The proposed approach is based on the real-time deformable detector, a boosting trained classifier. We describe a methodology to design the ensemble of real-time deformable detectors (one for each hand posture that can be classified). Given the lack of standard procedures for performance evaluation, we also propose the use of full image evaluation for this purpose. Such an evaluation methodology provides us with a more realistic estimation of the performance of the method. We have measured the performance of the proposed system and compared it to the one obtained by using only the sampled window approach. We present detailed results of such tests using a benchmark dataset. Our results show that the system can operate in real time at about a 10-fps frame rate.

Highlights

  • Human-robot interaction (HRI) tasks are needed to enable humans and robots to perform tasks in a cooperative way

  • We propose to address this problem using an ensemble of hand detectors, based on the real-time deformable detector (RTDD)

  • We show some examples of the hand posture detection experiments

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Summary

Introduction

Human-robot interaction (HRI) tasks are needed to enable humans and robots to perform tasks in a cooperative way. Burger et al [1] teach a robot how to perform an interactive manipulation task. Another example comes from the work of Muhlig et al [2], where a robot is taught a kinematic sequence that it can reproduce in new situations. Interaction by using hand gestures is one of the most intuitive ways to interact with a robot in conjunction with voice command. The hand recognition system needs to be fast enough to recognize hand gestures and to work under different outdoor and indoor scenarios.

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