Visual servoing using the sum of conditional variance

Bertrand Delabarre, É. Marchand
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引用次数: 18

Abstract

In this paper we propose a new way to achieve direct visual servoing. The novelty is the use of the sum of conditional variance to realize the optimization process of a positioning task. This measure, which has previously been used successfully in the case of visual tracking, has been shown to be invariant to non-linear illumination variations and inexpensive to compute. Compared to other direct approaches of visual servoing, it is a good compromise between techniques using the illumination of pixels which are computationally inexpensive but non robust to illumination variations and other approaches using the mutual information which are more complicated to compute but offer more robustness towards the variations of the scene. This method results in a direct visual servoing task easy and fast to compute and robust towards non-linear illumination variations. This paper describes a visual servoing task based on the sum of conditional variance performed using a Levenberg-Marquardt optimization process. The results are then demonstrated through experimental validations and compared to both photometric-based and entropy-based techniques.
使用条件方差和的视觉伺服
本文提出了一种实现直接视觉伺服的新方法。新颖之处在于利用条件方差和来实现定位任务的优化过程。这一措施,以前已成功地用于视觉跟踪的情况下,已被证明是不变的非线性照明变化和廉价的计算。与其他直接的视觉伺服方法相比,它是使用计算成本低但对照明变化不鲁棒的像素照明技术和使用互信息的其他方法之间的一个很好的折衷,这些方法计算起来更复杂,但对场景的变化提供了更强的鲁棒性。该方法具有计算简单、速度快、对非线性光照变化具有鲁棒性等优点。本文描述了一种基于条件方差和的视觉伺服任务,该任务采用Levenberg-Marquardt优化过程。然后通过实验验证证明了结果,并与基于光度法和基于熵法的技术进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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