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Contextual boost for pedestrian detection

机译:行人检测的语境提升

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摘要

Pedestrian detection from images is an important and yet challenging task. The conventional methods usually identify human figures using image features inside the local regions. In this paper we present that, besides the local features, context cues in the neighborhood provide important constraints that are not yet well utilized. We propose a framework to incorporate the context constraints for detection. First, we combine the local window with neighborhood windows to construct a multi-scale image context descriptor, designed to represent the contextual cues in spatial, scaling, and color spaces. Second, we develop an iterative classification algorithm called contextual boost. At each iteration, the classifier responses from the previous iteration across the neighborhood and multiple image scales, called classification context, are incorporated as additional features to learn a new classifier. The number of iterations is determined in the training process when the error rate converges. Since the classification context incorporates contextual cues from the neighborhood, through iterations it implicitly propagates to greater areas and thus provides more global constraints. We evaluate our method on the Caltech benchmark dataset [11]. The results confirm the advantages of the proposed framework. Compared with state of the arts, our method reduces the miss rate from 29% by [30] to 25% at 1 false positive per image (FPPI).
机译:图像的行人检测是一个重要且富有挑战性的任务。传统方法通常使用当地区域内的图像特征识别人类的图。在本文中,除了当地特征之外,除了本地特征之外,附近的上下文提示提供了尚未充分利用的重要约束。我们提出了一个框架来融合上下文约束进行检测。首先,我们将本地窗口与邻域Windows组合以构建多尺度图像上下文描述符,该描述符设计以表示空间,缩放和颜色空间中的上下文线轴。其次,我们开发一种称为上下文提升的迭代分类算法。在每次迭代时,来自邻域跨越邻域和多个图像比例的先前迭代的分类器响应,称为分类上下文,被称为用于学习新分类器的附加功能。当误差率收敛时,在训练过程中确定迭代的数量。由于分类上下文包含来自邻域的上下文提示,因此通过迭代地隐式传播到更大的区域,因此提供了更多的全局约束。我们在CALTECH基准数据集中评估我们的方法[11]。结果证实了提出的框架的优势。与现有技术相比,我们的方法将60%的错过率降低了每张图像1误报(FPPI)。

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