降维算法的比较分析,案例研究:PCA

Sugandha Agarwal, P. Ranjan, A. Ujlayan
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引用次数: 8

摘要

在对数据局部性质进行评价的基础上,计算机视觉领域提出了许多非线性技术。降维的应用涉及医学、地理、仿真等多个领域。我学习过MDS, LLE和LTSA。总的来说,用户可以使用线性系统中的搜索工具。本文对现有的各种技术进行了综述和系统的比较。通过识别当前的非线性技术来解释输出,并提出有关改进非线性降维技术性能的建议。该思想的目的是通过分析人脸检测器和人脸识别器对多人的实时检测结果,结合特征人脸的主成分分析,将其应用于多个领域。根据最近的研究,公共场所的安全面临着一些问题。随着摄像机网络范围和复杂性的不断扩大,以及审计环境的日益复杂和拥挤,这些问题的效率和准确性将得到提高。本文讨论了如何面对这些新出现的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative analysis of dimensionality reduction algorithms, case study: PCA
On the basis of the evaluation of local properties of the data many nonlinear techniques have been suggested the field of computer vision. The application of the dimensionality reduction covers many fields like medical, geographical, simulation and many more. I have studied MDS, LLE and LTSA. Overall, the users are allowed to access the search-tools in linear system. A review and systematic comparison of all the existing techniques has been presented in this paper. The outputs have been explained through identification of current non-linear techniques, and suggestions pertaining to the way the performance of nonlinear dimensionality reduction techniques can be improved. The Purpose of this idea is based on the to implement it in manifold fields by analyzing the result of face detector and recognizer for multiple people in real time with Principal Component analysis on eigen face. According to the most recent research, some issues are confronted in the security at public places. The efficiency and accuracy of these problems can be improved with the range and intricacy of camera networks are booming and the audited surroundings have become more and more entangled and crowded. How these emerging challenges are faced is discussed in the paper.
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