使用谷歌街景和YOLO进行视觉污染检测

Md. Yearat Hossain, Ifran Rahman Nijhum, Abu Adnan Sadi, Md. Tazin Morshed Shad, Rashedur M. Rahman
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引用次数: 3

摘要

近年来,视觉污染已成为快速崛起的城市关注的主要问题。本研究涉及从谷歌街景收集的街道图像中检测视觉污染物。在这个实验中,我们选择了孟加拉国首都达卡的街道来构建我们的图像数据集,主要是因为达卡最近被评为世界上污染最严重的城市之一。然而,本研究中显示的方法可以应用于世界上任何城市的图像,并将产生接近相似的输出。在整个研究中,我们试图描述谷歌街景在构建数据集中的可能用途,以及如何在深度学习的帮助下使用这些数据来解决环境污染问题。图像数据集是手动创建的,从每个街景的不同角度截取屏幕截图,并在框架中添加视觉污染物。然后使用CVAT对图像进行手动注释,并将其输入模型进行训练。对于检测,我们使用了目标检测模型YOLOv5来检测图像中存在的所有视觉污染物。最后,我们评估了本研究取得的结果,并给出了在不同领域使用本研究结果的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual Pollution Detection Using Google Street View and YOLO
In recent years, visual pollution has become a major concern in rapidly rising cities. This research deals with detecting visual pollutants from the street images collected using Google Street View. For this experiment, we chose the streets of Dhaka, the capital city of Bangladesh, to build our image dataset, mainly because Dhaka was ranked recently as one the most polluted cities in the world. However, the methods shown in this study can be applied to images of any city around the world and would produce close to a similar output. Throughout this study, we tried to portray the possible utilisation of Google Street View in building datasets and how this data can be used to solve environmental pollution with the help of deep learning. The image dataset was created manually by taking screenshots from various angles of every street view with visual pollutants in the frame. The images were then manually annotated using CVAT and were fed into the model for training. For the detection, we have used the object detection model YOLOv5 to detect all the visual pollutants present in the image. Finally, we evaluated the results achieved from this study and gave direction of using the outcome from this study in different domains.
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