在一系列图像中进行证据过滤以进行识别

Sukhan Lee, M. Ilyas, Jaewoong Kim, A. Naguib
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引用次数: 2

摘要

在从图像中识别具有其属性(如姿态)的目标物体/实体时,最初提取的证据可能是不确定和/或模糊的,因为它们只能被概率地定义和/或不满足识别的充分条件。这些与证据相关的不确定性和模糊性通常是由于外部的,不可控的原因,如场景中照明和纹理分布的变化,以及所使用的成像工具的质量。本文提出了一种从图像序列中过滤不确定和模糊证据的方法,以达到可靠的识别决策水平。首先,在每个图像序列中,利用三维线条、三维形状描述符和SIFT生成一些可能存在歧义或不确定性的弱证据,以快速可靠地决定识别。为了达到忠实的识别,我们需要通过外观向量来丰富这些证据,并以更高的权重生成目标物体的多重解释。我们结合了先前建立的贝叶斯证据结构,它体现了识别的充分条件,以产生这样的解释。此外,当机器人移动时,我们使用粒子滤波框架对图像序列进行主动识别,以产生最高权重和最低误差协方差的解释。本文详细介绍了在自制机器人中使用粒子滤波对图像序列进行证据滤波的实现和实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evidence filtering in a sequence of images for recognition
In recognizing a target object/entity with its attribute such as pose from images, the evidences extracted initially may be uncertain and/or ambiguous as they can only be defined probabilistically and/or do not satisfy the sufficient condition for recognition. These uncertainties and ambiguities associated with evidences are often due as much to the external, uncontrollable causes, such as the variation of illumination and texture distributions in the scene, as to the quality of the imaging tools used. This paper presents a method of filtering the uncertain and ambiguous evidences obtained from a sequence of images in such a way as to reach a reliable decision level for recognition. First, at each of the image sequence, a number of weak evidences are generated using 3D line, 3D shape descriptor and SIFT which may be ambiguous and/or uncertain to decide recognition quickly and reliably. To reach a faithful recognition, we need to enrich these evidences by Appearance vector and generate multiple interpretations of the target object with higher weights. We incorporate prior established Bayesian Evidence structure which embodied sufficient condition for recognition, to generate such interpretations. Furthermore, when robot moves, we do active recognition using particle filter framework in sequence of images to produce interpretation with highest weight and lowest error covariance. This paper provides readers with the details of the implementation and experimental results of Evidence Filtering in image sequences using Particle filter in HomeMate Robot application.
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