低分辨率视频中的行人检测

Hisham Sager, W. Hoff
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引用次数: 10

摘要

低分辨率视频中的行人检测可能具有挑战性。在户外监控场景中,图像中的行人尺寸通常非常小(大约20像素高)。最常见和成功的单帧行人检测方法使用基于梯度的特征和支持向量机分类器。我们提出了这些思想的扩展,并开发了一种新的算法,从由短序列图像(持续时间约为一秒)组成的时空体中提取梯度特征。人的运动所提供的额外信息补偿了解析度的损失。在标准数据集(PETS2001, VIRAT)上,我们显示了比单帧检测性能的显著改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pedestrian detection in low resolution videos
Pedestrian detection in low resolution videos can be challenging. In outdoor surveillance scenarios, the size of pedestrians in the images is often very small (around 20 pixels tall). The most common and successful approaches for single frame pedestrian detection use gradient-based features and a support vector machine classifier. We propose an extension of these ideas, and develop a new algorithm that extracts gradient features from a spatiotemporal volume, consisting of a short sequence of images (about one second in duration). The additional information provided by the motion of the person compensates for the loss of resolution. On standard datasets (PETS2001, VIRAT) we show a significant improvement in performance over single-frame detection.
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