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Recognition of partially occluded objects using neural network based indexing

机译:使用基于神经网络的索引识别部分遮挡的物体

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In this paper, a new neural network based indexing scheme has been proposed for recognition of planar shapes. Local contour segment-based-invariants have been used for indexing. Object contours have been obtained using a new algorithm which combines advantages of region growing and edge detection. Neighbourhood constraints have been applied on the results of indexing for combining hypotheses generated through the indexing scheme. Composite hypotheses have been verified using a distance transform based algorithm. Experimental results, on real images of varying complexity of a reasonably large database of objects have established the robustness of the method.
机译:在本文中,提出了一种新的基于神经网络的索引方案来识别平面形状。基于局部轮廓线段的不变量已用于索引。使用新算法获得了物体轮廓,该算法结合了区域增长和边缘检测的优势。邻域约束已应用于索引结果,以结合通过索引方案生成的假设。使用基于距离变换的算法已验证了复合假设。在相当大的对象数据库的复杂度不同的真实图像上的实验结果确定了该方法的鲁棒性。

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