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Object Recognition Using Particle Swarm Optimization on Fourier Descriptors

机译:傅里叶描述子的粒子群优化算法在物体识别中的应用

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摘要

This work presents study and experimentation for object recognition when isolated objects are under discussion. The circumstances of similarity transformations, presence of noise, and occlusion have been included as the part of the study. For simplicity, instead of objects, outlines of the objects have been used for the whole process of the recognition. Fourier Descriptors have been used as features of the objects. From the analysis and results using Fourier Descriptors, the following questions arise: What is the optimum number of descriptors to be used? Are these descriptors of equal importance? To answer these questions, the problem of selecting the best descriptors has been formulated as an optimization problem. Particle Swarm Optimization technique has been mapped and used successfully to have an object recognition system using minimal number of Fourier Descriptors. The proposed method assigns, for each of these descriptors, a weighting factor that reflects the relative importance of that descriptor.
机译:当讨论孤立的对象时,这项工作提出了对象识别的研究和实验。相似性转换,噪声的存在和遮挡的情况已作为研究的一部分。为了简单起见,代替对象,而是将对象的轮廓用于识别的整个过程。傅里叶描述符已用作对象的特征。从使用傅立叶描述符进行的分析和结果中,出现以下问题:要使用的描述符的最佳数量是多少?这些描述符是否同样重要?为了回答这些问题,选择最佳描述符的问题已被表述为优化问题。粒子群优化技术已被映射并成功用于具有最少数量傅立叶描述符的目标识别系统。所提出的方法为这些描述符中的每一个分配一个加权因子,以反映该描述符的相对重要性。

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