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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Pedestrian detection with super-resolution reconstruction for low-quality image
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Pedestrian detection with super-resolution reconstruction for low-quality image

机译:用于低质量图像的超分辨率重建的行人检测

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摘要

Pedestrian detection has emerged as a fundamental technology for autonomous cars, robotics, pedestrian search, and other applications. Although many excellent object detection algorithms can be used for pedestrian detection, it is still a challenging problem due to the complicated real-world scenarios, e.g., the detection of pedestrians in low-quality surveillance videos. In this paper, we aim to study the challenging topic of pedestrian detection in low-quality images. Low-quality images are interpreted as those taken with a low-resolution camera, heavy weather or a blurred scene, making it difficult to distinguish pedestrians from the background. To solve this problem, we first introduce a dataset called playground (PG) for low-quality image detection. Images from PG are shot using two different camera views, and pedestrian images are taken at different periods, including day and night. The dataset contains a total of 5,752 images with 31,041 annotations. The average size of the pedestrian is 87 x 41 and the image size is 480 x 640, indicating that these images are taken from very long distances. Then, we propose a super-resolution detection (SRD) network to enhance the resolution of low-quality images that can help distinguish pedestrians from the blurred background. Finally, based on these enhanced images, we adopt and improve the Faster R-CNN network to help relocate occluded pedestrians. Experimental results on this new dataset proved the efficiency and effectiveness of our algorithm on low-quality images. (c) 2021 Elsevier Ltd. All rights reserved.
机译:行人检测已经成为自动驾驶汽车、机器人、行人搜索和其他应用的基础技术。尽管许多优秀的目标检测算法可用于行人检测,但由于现实场景复杂,例如低质量监控视频中的行人检测,这仍然是一个具有挑战性的问题。本文旨在研究低质量图像中行人检测的挑战性课题。低质量图像被解读为使用低分辨率相机、恶劣天气或模糊场景拍摄的图像,这使得行人与背景难以区分。为了解决这个问题,我们首先引入了一个名为Playerd(PG)的数据集,用于低质量的图像检测。PG的图像是使用两种不同的摄像机视图拍摄的,行人图像是在不同的时段拍摄的,包括白天和夜间。该数据集共包含5752幅图像和31041条注释。行人的平均大小为87 x 41,图像大小为480 x 640,表明这些图像是从很远的距离拍摄的。然后,我们提出了一种超分辨率检测(SRD)网络来提高低质量图像的分辨率,这有助于区分行人和模糊背景。最后,基于这些增强图像,我们采用并改进了更快的R-CNN网络来帮助重新定位被遮挡的行人。在这个新数据集上的实验结果证明了我们的算法在低质量图像上的效率和有效性。(c)2021爱思唯尔有限公司保留所有权利。

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