Abstract
With significant development of sensors and Internet of things (IoT), researchers nowadays can easily know what happens in water ecosystem by acquiring water images. Essentially, growing data category and size greatly contribute to solving water pollution problems. In this paper, we focus on classifying water images to sub-categories of clean and polluted water, thus promoting instant feedback of a water pollution monitoring system that utilizes IoT technology to capture water image. Due to low inter-class and high intra-class differences of captured water images, water image classification is challenging. Inspired by the ability to extract highly distinguish features of Convolutional Neural Network (CNN), we aim to construct an attention neural network for IoT captured water images classification that appropriately encodes channel-wise and multi-layer properties to accomplish feature representation enhancement. During construction, we firstly propose channel-wise attention gate structure and then utilize it to construct a hierarchical attention neural network in local and global sense. We carried out comparative experiments on an image dataset about water surface with several studies, which showed the effectiveness of the proposed attention neural network for water image classification. We applied the proposed neural network as a key part of a water image based pollution monitoring system, which helps users to monitor water pollution breaks in real-time and take instant actions to deal with pollution.
Highlights
Water ecosystems including rivers, lakes, and seas are facing great threats brought by fast development of human society
We propose an attention neural network for Internet of things (IoT) captured water images classification task, which dynamically modulates context of channel-wise and multi-layer characteristics to enhance feature map
We propose channel-wise attention gate at first and utilize it to build hierarchical attention model
Summary
Lakes, and seas are facing great threats brought by fast development of human society. With development of sensor technology [1] and Internet of things (IoT) [2], category, volume, and quality of collected relevant data have been continuously increased and improved. With the help of collected data, researchers can develop systems to instantly monitor, control, and abate pollution, protecting water ecosystems. As an important research topic in water ecosystem monitoring, utilizing artificial intelligence to theoretical understand relevant data under the environment of IoT has been widely developed in areas of water resource management and environmental protection. Thanks to deployment of drones, surveillance cameras, and other technologies of IoT [3,4], many relevant water data are easy to obtain. The advantage brought by much modification is that government users can effectively know where and when pollution is happening without obvious time
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