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Object Recognition Using Local Characterisation and Zernike Moments

机译:使用局部特征和Zernike矩的物体识别

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摘要

Even if lots of object invariant descriptors have been proposed in the literature, putting them into practice in order to obtain a robust system face to several perturbations is still a studied problem. Comparative studies between the most commonly used descriptors put into obviousness the invariance of Zernike moments for simple geometric transformations and their ability to discriminate objects. Whatever, these moments can reveal themselves insufficiently robust face to perturbations such as partial object occultation or presence of a complex background. In order to improve the system performances, we propose in this article to combine the use of Zernike descriptors with a local approach based on the detection of image points of interest. We present in this paper the Zernike invariant moments, Harris keypoint detector and the support vector machine. Experimental results present the contribution of the local approach face to the global one in the last part of this article.
机译:即使在文献中已经提出了许多对象不变的描述子,将它们付诸实践以便获得鲁棒的系统面对多个扰动仍然是一个研究的问题。最常用的描述符之间的比较研究清楚地表明了简单几何变换的Zernike矩不变性及其区分对象的能力。无论如何,这些时刻可能会显示出自身不足以抵抗诸如部分物体掩盖或复杂背景的存在之类的干扰。为了提高系统性能,我们在本文中建议将Zernike描述符的使用与基于感兴趣图像点检测的局部方法结合起来。我们在本文中介绍了Zernike不变矩,Harris关键点检测器和支持向量机。实验结果在本文的最后部分提出了局部方法对全局方法的贡献。

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