Urban rivers provide a water environment that influences residential living. River surface monitoring has become crucial for making decisions about where to prioritize cleaning and when to automatically start the cleaning treatment. We focus on the organic mud, or "scum" that accumulates on the river's surface and gives it its peculiar odor and external economic effects on the landscape. Because of its feature of a sparsely distributed and unstable pattern of organic shape, automating the monitoring has proved difficult. We propose a patch classification pipeline to detect scum features on the river surface using mixture image augmentation to increase the diversity between the scum floating on the river and the entangled background on the river surface reflected by nearby structures like buildings, bridges, poles, and barriers. Furthermore, we propose a scum index covered on rivers to help monitor worse grade online, collecting floating scum and deciding on chemical treatment policies. Finally, we show how to use our method on a time series dataset with frames every ten minutes recording river scum events over several days. We discuss the value of our pipeline and its experimental findings.
翻译:城市河流提供了影响居民生活的水环境。 河流地表监测对于决定清洁的优先顺序和何时自动开始清洁处理至关重要。 我们关注在河水表面积聚的有机泥,即“积水”给河面带来奇特的气味和外部经济影响。 其特点是有机形状分布稀少且不稳定,因此监测工作难以自动化。 我们提议对河水表面的败类特征进行补丁分类,利用混合图像放大来增加河上漂浮的败类与附近建筑(如建筑物、桥梁、杆和屏障)所反映出的河面缠绕背景之间的多样性。 此外,我们提议在河上建立一个人渣指数,帮助监测更差的在线等级,收集浮质人渣,并决定化学处理政策。 最后,我们展示如何在时间序列数据集中使用我们的方法,每10分钟以框架记录几天的河流败类事件。我们讨论了管道的价值及其实验结果。