Structured-light based joint recognition using bottom-up and top-down combined visual processing

Yefei Gong, X. Dai, Xinde Li
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引用次数: 13

Abstract

In this paper a multilayer hierarchical visual processing architecture integrated with a bottom-up and top-down combined inference algorithm is proposed for robust weld joint recognition and localization. Three layers-pixel layer, primitive layer, and profile layer-are defined, firstly laser stripe centerline points are coarsely extracted from the image in pixel layer, then the primitive layer primitives are obtained by a grouping algorithm with a hypothesis-verification scheme, and at last a hypothesis for a joint pattern based on partial match is generated from profile layer and verified by searching through the lower layers of the hierarchy. During the top-down verification process, primitive that is partially extracted during former processing is recovered by using a local adaptive segmentation technique, which is intended to accommodate to different noise-to-signal levels. Experimental results validate the robust performance of this approach in the presence of heavy noise in real-time.
基于自底向上和自顶向下联合视觉处理的结构光联合识别
本文提出了一种结合自底向上和自顶向下组合推理算法的多层分层视觉处理体系结构,用于焊缝的鲁棒识别和定位。将图像定义为像素层、原始层和轮廓层,首先在像素层中粗提取激光条纹中心线点,然后采用假设-验证方案对原始层基元进行分组,最后在轮廓层中生成基于部分匹配的联合模式假设,并通过层次结构下层的搜索进行验证。在自顶向下的验证过程中,通过使用局部自适应分割技术恢复在前一处理过程中部分提取的原语,该技术旨在适应不同的噪声-信号水平。实验结果验证了该方法在实时高噪声环境下的鲁棒性。
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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