基于立体的部分遮挡行人检测框架

Samuele Martelli, M. Cristani, Vittorio Murino
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引用次数: 1

摘要

最近,由于大规模多感官数据集的可用性,行人检测文献得到了扩展,这些数据集能够捕获感兴趣对象的互补方面,即外观、运动和深度。在本文中,我们利用这种多模态场景提出了一套新的复合描述符,称为CO2,视觉特征的co -variance和深度场的CO-occurrences。视觉特征的协方差使我们能够在低水平上整合与强度和纹理相关的异质视觉线索。深度场的共现是一种全新的描述符,它使用距离信息来表征行人的整体形状,同时也能够识别其遮挡部分。本文说明了如何将这些描述符实例化并组合在一起,从而提高检测能力,同时也受益于对遮挡的正确处理。实验结果表明,将二氧化碳输入到标准判别分类系统中,可以在最近基于多模态强度和基于立体的行人数据集上设置最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stereo-Based Framework for Pedestrian Detection with Partial Occlusion Handling
The pedestrian detection literature has been recently extended by the availability of large-scale multisensory datasets, able to capture complementary aspects of the objects of interest, namely, appearance, motion, and depth. In this paper, we exploit this multimodal scenario to propose a new set of composite descriptors dubbed CO2, CO-variances of visual features and CO-occurrences of depth fields. Covariances of visual features allow us to integrate at low-level heterogeneous visual cues related to intensity and texture. Co-occurrences of depth fields are brand new descriptors, which use range information for characterizing the global shape of a pedestrian while being also able to identify its occluded parts. This paper illustrates how these descriptors can be instantiated and combined together, improving detection capabilities taking also benefit from the proper handling of occlusions. Experimental results show that CO2, fed into a standard discriminative classification system, set state-of-the-art performances on recent multi-modal intensity- and stereo-based pedestrian datasets.
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