PCA-SVM을 이용한 Human Detection을 위한 HOG-Family 특징 비교

Evaluation of HOG-Family Features for Human Detection using PCA-SVM

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  • 이칠우 (전남대학교 전자컴퓨터공학과)
  • 발행 : 2008.02.13

초록

Support Vector Machine (SVM) is one of powerful learning machine and has been applied to varying task with generally acceptable performance. The success of SVM for classification tasks in one domain is affected by features which represent the instance of specific class. Given the representative and discriminative features, SVM learning will give good generalization and consequently we can obtain good classifier. In this paper, we will assess the problem of feature choices for human detection tasks and measure the performance of each feature. Here we will consider HOG-family feature. As a natural extension of SVM, we combine SVM with Principal Component Analysis (PCA) to reduce dimension of features while retaining most of discriminative feature vectors.

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