基于Mean-Shift补丁的统一框架多类分割。

Lin Yang, Peter Meer, David J Foran
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引用次数: 135

摘要

基于对象的分割是一个具有挑战性的课题。以前的大多数算法都集中在分割单个或一小组对象上。在本文中,使用在mean-shift patch上集成的关键点模型的外观和袋来实现基于多类对象的分割。我们还提出了一种新的仿射不变描述符来模拟关键点的空间关系,并应用椭圆傅里叶描述符来描述全局形状。该算法计算效率高,并在三个实际数据集上使用较少的训练样本进行了测试。我们的算法比文献中报道的其他研究提供了更好的结果。
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Multiple Class Segmentation Using A Unified Framework over Mean-Shift Patches.

Object-based segmentation is a challenging topic. Most of the previous algorithms focused on segmenting a single or a small set of objects. In this paper, the multiple class object-based segmentation is achieved using the appearance and bag of keypoints models integrated over mean-shift patches. We also propose a novel affine invariant descriptor to model the spatial relationship of keypoints and apply the Elliptical Fourier Descriptor to describe the global shapes. The algorithm is computationally efficient and has been tested for three real datasets using less training samples. Our algorithm provides better results than other studies reported in the literature.

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