基于深度卷积神经网络的受限区域人体检测

Trandafir-Liviu Serghei, L. Ichim, D. Popescu
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引用次数: 2

摘要

在最先进的DCNNs的帮助下,可以在低空和中高空从无人机获取的图像和视频中精确检测人员。本文提出了两种DCNNs: Scaled-YOLOv4和YOLOv7,通过迁移学习在自定义数据集上训练,并使用无人机获取的数据进行比较。目的是利用YOLOv7的能力来训练具有良好精度的轻量级模型,该模型可以加载到能够实时检测人员的机载无人机的嵌入式系统上。通过迁移学习,该模型采用YOLOv7架构,在海拔30m处检测得分达到90%以上。实验证明了它能够以超过70%的置信度成功地逐帧进行多次人体检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Detection in Restricted Areas Using Deep Convolutional Neural Networks
With the help of state-of-the-art DCNNs precise detection of persons is possible in images and videos acquired from UAVs at low and medium altitudes. The current paper proposes for comparison of two DCNNs: Scaled-YOLOv4 and YOLOv7 trained on a custom dataset through transfer learning with data acquired from UAV. The aim is to take advantage of the capabilities of YOLOv7 to train a lightweight model with good accuracy that can be loaded on embedded systems present onboard UAVs capable of real-time person detection. Through transfer learning, the model achieves detection scores above 90% at altitudes of 30m using YOLOv7 architecture. Experiments were conducted to prove its ability to successfully multiple human detection frame-by-frame with over 70% confidence scores.
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