基于多特征协方差的静止图像行人检测

Yaping Liu, Jian Yao, Renping Xie, Sa Zhu
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引用次数: 11

摘要

本文的目标是从静止图像中检测行人,重点是开发鲁棒特征表示,将图像区域编码为协方差矩阵,以支持高精度的行人/非行人决策。首先利用一种基于积分图像的协方差快速计算方法。通过综合基于协方差的目标检测和基于hog和fdf的行人检测的优点,我们引入了四种新的特征表示来训练行人检测器:基于协方差的一阶定向梯度直方图(Cov-HOG1)、基于协方差的二阶定向梯度直方图(Cov-HOG2)、基于协方差的一阶四方向特征(Cov-FDF1)和基于协方差的二阶四方向特征(Cov-FDF2)。为了测试我们的特征集,我们采用了一个相对简单的学习框架,它使用LogitBoost算法将每个可能的图像区域分类为行人或非行人。实验结果表明,该算法在INRIA人物数据集以及Google和Flickr网站上采集的图像上取得了令人满意的行人检测性能。
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Pedestrian detection from still images based on multi-feature covariances
This paper targets the detection of pedestrians from still images, which focuses on developing robust feature representations that encode image regions as covariance matrices to support high accuracy pedestrian/non-pedestrian decisions. Firstly we utilize a fast method for computation of covariances based on integral images. By integrating the advantages of both covariance-based object detection and HOG-and FDF-based pedestrian detection, we then introduce four new feature representations for training a pedestrian detector: Covariance-based first-order Histogram of Oriented Gradient (Cov-HOG1), Covariance-based second-order Histogram of Oriented Gradient (Cov-HOG2), Covariance-based first-order Four Directional Features (Cov-FDF1), and Covariance-based second-order Four Directional Features (Cov-FDF2). To test our feature sets, we adopt a relatively simple learning framework that uses LogitBoost algorithm to classify each possible image region as a pedestrian or as a non-pedestrian. The experimental results show that the proposed algorithm obtains satisfactory pedestrian detection performances on the INRIA person datasets as well as images collected from Google and Flickr websites.
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