论文标题

河面斑块探测器,使用混合物加强浮渣覆盖索引

River Surface Patch-wise Detector Using Mixture Augmentation for Scum-cover-index

论文作者

Yasuno, Takato, Fujii, Junichiro, Amakata, Masazumi

论文摘要

城市河流提供了影响住宅生活的水环境。河流表面监测对于决定在哪里确定清洁工作以及何时自动开始清洁处理至关重要。我们专注于积聚在河流表面的有机泥浆或“浮渣”,并导致河的气味,并对景观产生外部经济影响。由于其具有稀疏分布和不稳定的有机形状模式的特征,因此很难自动化监测过程。我们建议使用混合图像增强材料来检测斑块分类管道,以检测河流表面上的浮渣特征,以增加漂浮在河流上的浮渣与附近建筑物,桥梁,杆子和障碍物(如建筑物,桥梁和障碍物)所反映的河流表面上的纠缠背景。此外,我们建议在河流上进行浮渣索引覆盖,以帮助在线监视较差的等级,收集浮浮渣并决定化学处理政策。最后,我们演示了我们的方法在一个时间序列数据集中使用,每十分钟就有几天的时间录制河流浮渣事件。我们讨论管道及其实验发现的重要性。

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 contributes to the river's odor and has external economic effects on the landscape. Because of its feature of a sparsely distributed and unstable pattern of organic shape, automating the monitoring process has proved difficult. We propose a patch-wise 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 cover on rivers to help monitor worse grade online, collect floating scum, and decide on chemical treatment policies. Finally, we demonstrate the application of our method on a time series dataset with frames every ten minutes recording river scum events over several days. We discuss the significance of our pipeline and its experimental findings.

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