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Significantly improving human detection in low-resolution images by retraining YOLOv3

机译:通过再培训yolov3,显着提高低分辨率图像中的人工检测

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Human detection in images is a crucial task due to its usage in different areas including person detection and identification, abnormal surveillance and crowd counting. Low-resolution of image sequences taken by stationary outdoor surveillance cameras is very challenging. Detecting human with deep learning techniques, is more powerful than traditional methods due to its ability to learn high-level deeper features, high detection accuracy and speed. Therefore, this paper proposes a method for human detection in low-resolution images based on YOLOv3. This method will prepare a dataset of low-resolution images collected by outdoor surveillance cameras and annotate them manually. Next, we retrain YOLOv3 to make an improved model for low-resolution images. The model achieves F1-score of 0.804 human detecting for low-resolution test images.
机译:由于其在不同领域的使用情况,图像中的人类检测是一个重要的任务,包括人员检测和识别,异常监测和人群计数。 静止室外监视摄像机采取的图像序列的低分辨率非常具有挑战性。 检测人类具有深入学习技术,比传统方法更强大,因为它可以学习高级更深的功能,高检测精度和速度。 因此,本文提出了一种基于YOLOV3的低分辨率图像中的人体检测方法。 该方法将准备由室外监控摄像机收集的低分辨率图像的数据集,并手动注释它们。 接下来,我们重新培训YOLOV3以使低分辨率图像进行改进的模型。 该模型实现了低分辨率测试图像的0.804人的F1分数。

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