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An effective 3D target recognition model imitating robust methods of the human visual system

机译:模仿人类视觉系统鲁棒方法的有效3D目标识别模型

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摘要

This paper presents a model of 3D object recognition motivated from the robust properties of human vision system (HVS). The HVS shows the best efficiency and robustness for an object identification task. The robust properties of the HVS are visual attention, contrast mechanism, feature binding, multi-resolution, size tuning, and part-based representation. In addition, bottom-up and top-down information are combined cooperatively. Based on these facts, a plausible computational model integrating these facts under the Monte Carlo optimization technique was proposed. In this scheme, object recognition is regarded as a parameter optimization problem. The bottom-up process is used to initialize parameters in a discriminative way; the top-down process is used to optimize them in a generative way. Experimental results show that the proposed recognition model is feasible for 3D object identification and pose estimation in visible and infrared band images.
机译:本文提出了一种基于人类视觉系统(HVS)强大属性的3D对象识别模型。 HVS显示出用于对象识别任务的最佳效率和鲁棒性。 HVS的强大特性是视觉注意力,对比度机制,特征绑定,多分辨率,尺寸调整和基于零件的表示。另外,自下而上和自上而下的信息被组合在一起。基于这些事实,提出了在蒙特卡洛优化技术下整合这些事实的合理计算模型。在该方案中,对象识别被视为参数优化问题。自下而上的过程用于区分参数地初始化参数。自上而下的过程用于以生成方式优化它们。实验结果表明,所提出的识别模型对于可见光和红外波段图像的3D目标识别和姿态估计是可行的。

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