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EDGE20:用于多个监测问题的互谱评估数据集。

EDGE20: A Cross Spectral Evaluation Dataset for Multiple Surveillance Problems.

作者信息

Le Ha, Smailis Christos, Shi Weidong Larry, Kakadiaris Ioannis A

机构信息

University of Houston.

出版信息

IEEE Winter Conf Appl Comput Vis. 2020 May 14;2020 IEEE Winter Conference on Applications of Computer Vision:2674-2683. doi: 10.1109/wacv45572.2020.9093573.

Abstract

Surveillance-related datasets that have been released in recent years focus only on one specific problem at a time (e.g., pedestrian detection, face detection, or face recognition), while most of them were collected using visible spectrum (VIS) cameras. Even though some cross-spectral datasets were presented in the past, they were acquired in a constrained setup, which limited the performance of methods for the aforementioned problems under a cross-spectral setting. This work introduces a new dataset, named EDGE19, that can be used in addressing the problems of pedestrian detection, face detection, and face recognition in images captured using trail cameras under the VIS and NIR spectra. Data acquisition was performed in an outdoor environment, during both day and night, under unconstrained acquisition conditions. The collection of images is accompanied by a rich set of annotations, consisting of person and facial bounding boxes, unique subject identifiers, and labels that characterize facial images as frontal, profile, or back faces. Moreover, the performance of several state-of-the-art methods was evaluated for each of the scenarios covered by our dataset. The baseline results we obtained highlight the difficulty of current methods in the tasks of cross-spectral pedestrian detection, face detection, and face recognition due to unconstrained conditions, including low resolution, pose variation, illumination variation, occlusions, and motion blur.

摘要

近年来发布的与监控相关的数据集一次只关注一个特定问题(例如行人检测、面部检测或人脸识别),而且其中大多数是使用可见光谱(VIS)相机收集的。尽管过去曾出现过一些跨光谱数据集,但它们是在受限的设置下获取的,这限制了在跨光谱设置下针对上述问题的方法的性能。这项工作引入了一个名为EDGE19的新数据集,可用于解决在VIS和近红外光谱下使用跟踪相机拍摄的图像中的行人检测、面部检测和人脸识别问题。数据采集是在户外环境中,在白天和晚上的无约束采集条件下进行的。图像的收集伴随着一组丰富的注释,包括人物和面部边界框、唯一的主题标识符以及将面部图像表征为正面、侧面或背面的标签。此外,针对我们数据集涵盖的每个场景,评估了几种先进方法的性能。我们获得的基线结果突出了由于包括低分辨率、姿势变化、光照变化、遮挡和运动模糊在内的无约束条件,当前方法在跨光谱行人检测、面部检测和人脸识别任务中的困难。

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