基于学习的水污染实时监测系统

Qi Chen, Guanghua Cheng, Yajun Fang, Y. Liu, Zejun Zhang, Yiyang Gao, B. Horn
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引用次数: 10

摘要

水的质量对居民的健康有着深远的影响,因此对一个城市的水质进行实时监测至关重要。不幸的是,人类不可能经常监测水的化学成分,这是一项不可能完成的任务,更不用说实时监测了。因此,利用一个高效的系统是一个很好的解决方案。在本文中,我们创建了一个名为“水质实时智能监测系统”的系统,该系统使城市能够对潜在的污染爆发做出反应,并保护城市居民。该系统能够对从视觉图像中提取的数据进行处理和分类,从而大大节省了资金和劳动力。在这种情况下,快速傅里叶变换(FFT)和颜色布局描述符(CLD)分别用于显著性特征和颜色特征。FFT在提取显著性特征方面表现良好,计算量小;CLD能够高效、高效地表示颜色特征。此外,该系统利用了基于这些特征的支持向量机(SVM),训练集规模小,训练速度快,可以对漂浮垃圾和其他水污染场景进行分类,效率令人满意。到目前为止,准确率已经达到了75%,这让我们感到鼓舞。在进一步提高检测性能的同时,高效的特征和分类器将成为水污染自动监测的有力手段。
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Real-time Learning-based Monitoring System for Water Contamination
It is vital for a city to monitor water quality in real time since the quality of water has profound effect on residents’ health. Unfortunately, it is impossible for human to monitor water’s chemical composition frequently, which is an impossibly demanding task, let alone in real time. Thus, taking advantage of a highly efficient system can be an excellent solution. In this paper, we created a system called Real-time Intelligent Monitoring System for Water Quality, which enables a city to be responsive to potential outbreak of contamination and to protect city residents. The system is capable of processing and classifying the data extracted from visual images to considerably save more money and labor. In this case, two features Fast Fourier Transform (FFT) and Color Layout Descriptor (CLD) are introduced for Saliency features and color features respectively. FFT performs well in extracting saliency features and is not computationally intensive; CLD is able to represent the color features with high effectiveness and efficiency. Additionally, this system utilizes Support Vector Machine (SVM) based on such features that needs small size of training sets, trains very fast and can classify floating rubbish and any other scenarios of water pollution with satisfying efficiency. Till now, the accuracy has reached 75%, which encourages us. While the detection performance can be further improved, the efficient features & classifiers would serve as powerful methods to automatically monitor water pollution.
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