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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Fast Pedestrian Detection Using a Cascade of Boosted Covariance Features
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Fast Pedestrian Detection Using a Cascade of Boosted Covariance Features

机译:使用提升的协方差特征的级联快速行人检测

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摘要

Efficiently and accurately detecting pedestrians plays a very important role in many computer vision applications such as video surveillance and smart cars. In order to find the right feature for this task, we first present a comprehensive experimental study on pedestrian detection using state-of-the-art locally extracted features (e.g., local receptive fields, histogram of oriented gradients, and region covariance). Building upon the findings of our experiments, we propose a new, simpler pedestrian detector using the covariance features. Unlike the work in , where the feature selection and weak classifier training are performed on the Riemannian manifold, we select features and train weak classifiers in the Euclidean space for faster computation. To this end, AdaBoost with weighted Fisher linear discriminant analysis-based weak classifiers are designed. A cascaded classifier structure is constructed for efficiency in the detection phase. Experiments on different datasets prove that the new pedestrian detector is not only comparable to the state-of-the-art pedestrian detectors but it also performs at a faster speed. To further accelerate the detection, we adopt a faster strategy—multiple layer boosting with heterogeneous features—to exploit the efficiency of the Haar feature and the discriminative power of the covariance feature. Experiments show that, by combining the Haar and covariance features, we speed up the original covariance feature detector by up to an order of magnitude in detection time with a slight drop in detection performance.
机译:高效,准确地检测行人在许多计算机视觉应用(例如视频监控和智能汽车)中扮演着非常重要的角色。为了找到适合此任务的特征,我们首先对行人检测进行全面的实验研究,使用最新的局部提取特征(例如,局部感受野,定向梯度直方图和区域协方差)。基于我们的实验结果,我们提出一种使用协方差特征的新型,更简单的行人检测器。与中的工作不同,后者在黎曼流形上执行特征选择和弱分类器训练,我们在欧几里得空间中选择特征并训练弱分类器以加快计算速度。为此,设计了基于加权Fisher线性判别分析的弱分类器AdaBoost。为了检测阶段的效率,构建了一个级联的分类器结构。在不同数据集上进行的实验证明,新的行人检测器不仅可以与最新的行人检测器相媲美,而且性能更高。为了进一步加快检测速度,我们采用了一种更快的策略-具有异构特征的多层增强-来利用Haar特征的效率和协方差特征的判别能力。实验表明,通过结合Haar和协方差特征,我们将原始协方差特征检测器的检测时间提高了一个数量级,而检测性能却有所下降。

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