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An advanced shape context descriptor based on multi-scale spaces

机译:基于多尺度空间的高级形状上下文描述符

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Traditional approaches of shape context (SC) descriptor are invariant to object contour noise and shape local slightly deformation, meanwhile, the neighbor radius parameter of shape context model need to be effectively selected without enough apriority knowledge. Additionally, object recognition performance and computational efficiency should be improved in a step future. Therefore, this paper provides an advanced shape context descriptor based on multi-scale spaces. Beyond this method, the shape context descriptor is only extracted from robust contour curvature extremal value point, which is effective to bate the influence of contour noise and local slightly deformation, the neighbor radius parameter is also automatically selected. Comparing with traditional shape matching algorithms, the robustness and the efficiency of this paper approach is tested to be improved distinctly, and the recognition performance is more reliable at the same time.
机译:传统的形状上下文(SC)描述符方法对于物体轮廓噪声和形状局部轻微变形是不变的,同时,在没有足够的先验知识的情况下,需要有效地选择形状上下文模型的邻居半径参数。此外,目标识别性能和计算效率应在未来的某个步骤中得到改善。因此,本文提供了一种基于多尺度空间的高级形状上下文描述符。除此方法外,仅从鲁棒的轮廓曲率极值点提取形状上下文描述符,这有效地消除了轮廓噪声和局部轻微变形的影响,还自动选择了相邻半径参数。与传统的形状匹配算法相比,该方法的鲁棒性和效率得到了明显提高,并且识别性能更加可靠。

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