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Real-Time Scan-Line Segment Based Stereo Vision for the Estimation of Biologically Motivated Classifier Cells

机译:基于实时扫描线段的立体声视觉,用于估计生物动力分类器细胞

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In this paper we present a real-time scan-line segment based stereo vision for the estimation of biologically motivated classifier cells in an active vision system. The system is challenged to overcome several problems in autonomous mobile robotic vision such as the detection of incoming moving objects and estimating its 3D motion parameters in a dynamic environment. The proposed algorithm employs a modified optimization module within the scan-line framework to achieve valuable reduction in computation time needed for generating real-time depth map. Moreover, the experimental results showed high robustness against noises and unbalanced light condition in input data.
机译:在本文中,我们提出了一种基于实时扫描线段的立体声视觉,用于估计有源视觉系统中的生物动机分类器单元。该系统受到挑战,以克服自主移动机器人视觉中的几个问题,例如检测传入移动对象并在动态环境中估计其3D运动参数。所提出的算法在扫描线框架内采用修改的优化模块,以实现生成实时深度图所需的计算时间的有价值的降低。此外,实验结果表明,对输入数据中的噪声和不平衡的光条件具有高稳健性。

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