Neural network algorithms for motion stereo

Y. Zhou, R. Chellappa
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引用次数: 26

Abstract

Motion stereo infers depth information from a sequence of image frames. Both batch and recursive neural network algorithms for motion stereo are presented. A discrete neural network is used for representing the disparity field. The batch algorithm first integrates information from all images by embedding them into the bias inputs of the network. Matching is then carried out by neuron evaluation. This algorithm implements the matching procedure only once, unlike conventional batch methods requiring matching many times. The method uses a recursive least square algorithm to update the bias inputs of the network. The disparity values are uniquely determined by the neuron states after matching. Since the neural network can be run in parallel and the bias input updating scheme can be executed on line, a real-time vision system employing such an algorithm is very attractive. A detection algorithm for locating occluding pixels is also included. Experimental results using natural image sequences are given.<>
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运动立体的神经网络算法
运动立体从一系列图像帧推断深度信息。提出了运动立体的批处理和递归神经网络算法。用离散神经网络表示视差场。批处理算法首先通过将所有图像嵌入到网络的偏差输入中来整合信息。然后通过神经元评估进行匹配。该算法只完成一次匹配过程,而不像传统的批处理方法需要多次匹配。该方法使用递归最小二乘算法来更新网络的偏差输入。视差值由神经元匹配后的状态唯一决定。由于神经网络可以并行运行,偏置输入更新方案可以在线执行,因此采用这种算法的实时视觉系统非常有吸引力。本文还包括一种定位遮挡像素的检测算法。给出了自然图像序列的实验结果。
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