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Efficiency Improvement in the Extraction of Histogram Oriented Gradient Feature for Human Detection Using Selective Histogram Bins and PCA

机译:使用选择性直方图bins和PCA进行直方图梯度特征提取以进行人体检测的效率提高

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Histogram of Oriented Gradient (HOG) feature which was originally proposed by Dalai and Triggs is widely used in vision-based human detection. However, HOG feature extraction method produced a large feature pool which is computationally intensive and very time consuming, causing it not so suitable for real time application. This paper proposed a method to reduce the HOG feature extraction time without affecting too much on its detection performance. The proposed method performs feature extraction using selective number of histogram bins. Higher number of histogram bins which can extract more detailed orientation information is applied on the regions of image that may contain human figure. The rest of the regions in the image are extracted using lower number of histogram bins. This will reduce the feature size without compromising too much on the performance. To further reduce the feature size, Principal Component Analysis (PCA) is used to rank the features and select only the representative features. A linear SVM classifier is used to evaluate the performance of the proposed method. Experiment was conducted using the INRIA human dataset. The test results showed that the proposed method is able to reduce the feature extraction time by 2.6 times compared to the original HOG and 7 times compared to the LBP method while providing comparable detection performance.
机译:达赖和特里格斯最初提出的定向梯度直方图(HOG)功能已广泛用于基于视觉的人体检测中。然而,HOG特征提取方法产生了很大的特征库,该特征库计算量大并且非常耗时,从而使其不适用于实时应用。本文提出了一种减少HOG特征提取时间而不影响其检测性能的方法。所提出的方法使用选择性数量的直方图箱来执行特征提取。可以提取更多详细方向信息的更高数量的直方图块将应用于可能包含人物的图像区域。使用较少数量的直方图bin提取图像中的其余区域。这将减小功能部件的大小,而不会影响性能。为了进一步减小特征尺寸,使用主成分分析(PCA)对特征进行排名并仅选择代表性特征。线性SVM分类器用于评估所提出方法的性能。实验是使用INRIA人类数据集进行的。测试结果表明,所提出的方法能够将特征提取时间与原始HOG相比减少2.6倍,与LBP方法相比减少7倍,同时提供可比的检测性能。

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