A Deep Learning Pipeline for Solid Waste Detection in Remote Sensing Images

Federico Gibellini, Piero Fraternali, Giacomo Boracchi, Luca Morandini, Thomas Martinoli, Andrea Diecidue, Simona Malegori
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Abstract

Improper solid waste management represents both a serious threat to ecosystem health and a significant source of revenues for criminal organizations perpetrating environmental crimes. This issue can be mitigated thanks to the increasing availability of Very-High-Resolution Remote Sensing (VHR RS) images. Modern image-analysis tools support automated photo-interpretation and large territory scanning in search of illegal waste disposal sites. This paper illustrates a semi-automatic waste detection pipeline, developed in collaboration with a regional environmental protection agency, for detecting candidate illegal dumping sites in VHR RS images. To optimize the effectiveness of the waste detector at the core of the pipeline, extensive experiments evaluate such design choices as the network architecture, the ground resolution and geographic span of the input images, as well as the pretraining procedures. The best model attains remarkable performance, achieving 92.02 % F1-Score and 94.56 % Accuracy. A generalization study assesses the performance variation when the detector processes images from various territories substantially different from the one used during training, incurring only a moderate performance loss, namely an average 5.1 % decrease in the F1-Score. Finally, an exercise in which expert photo-interpreters compare the effort required to scan large territories with and without support from the waste detector assesses the practical benefit of introducing a computer-aided image analysis tool in a professional environmental protection agency. Results show that a reduction of up to 30 % of the time spent for waste site detection can be attained.
基于深度学习管道的固体废物遥感图像检测
固体废物管理不当既是对生态系统健康的严重威胁,也是实施环境犯罪的犯罪组织的重要收入来源。由于高分辨率遥感(VHR RS)图像的日益可用性,这一问题可以得到缓解。现代影像分析工具支援自动解译相片及大范围扫描,以搜寻非法废物处置地点。本文介绍了与某地区环境保护机构合作开发的一种半自动废物检测管道,用于在VHR RS图像中检测潜在的非法倾倒地点。为了优化管道核心的废物检测器的有效性,大量的实验评估了网络架构、输入图像的地面分辨率和地理跨度以及预训练过程等设计选择。最佳模型取得了显著的性能,F1-Score达到92.02%,准确率达到94.56%。一项泛化研究评估了当检测器处理来自不同区域的图像时的性能变化,这些区域与训练期间使用的图像有很大不同,只会导致适度的性能损失,即f1分数平均下降5.1%。最后,专家照片解译人员比较了在有和没有废物探测器支持的情况下扫描大片地区所需的工作量,评估了在专业环境保护机构中引入计算机辅助图像分析工具的实际效益。结果表明,可以减少高达30%的时间用于废物现场检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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