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Smoke Density Measurement Method Based on Dual-Channel Deep CNN |
MO Hongfei1, XIE Zhenping1,2 |
1. School of Artificial Intelligence and Computer Science, Jiangnan University, Wuxi 214122 2. Jiangsu Key Laboratory of Media Design and Software Technology, Jiangnan University, Wuxi 214122 |
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Abstract In the existing methods for measuring smoke density based on video images, features are mainly extracted manually, and the external conditions, such as ambient light and background, are required as known conditions. To improve the directness and practicability of the smoke density measurement method, the corresponding relationship between smoke images and their density values is established through the Aerosolization equation. The smoke density dataset is established as well. A smoke density measurement method based on dual-channel deep convolution neural network(DCCNN) is proposed to realize the end-to-end direct measurement of smoke density. In DCCNN, 1×1 convolution is used for channel data fusion, and jump connection is introduced to make the neural network training faster. The self-attention mechanism is also introduced to learn the importance of hidden features automatically. Finally, the features extracted from two channels are combined to obtain comprehensive measurement results. Experiments show that DCCNN gains lower mean absolute error and higher comprehensive performance.
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Received: 30 April 2021
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Fund:National Natural Science Foundation of China(No.61872166), Six Talent Peaks Project in Jiangsu Province(No.XYDXX-161) |
Corresponding Authors:
XIE Zhenping, Ph.D., professor. His research interests include knowledge modeling and cognitive lear-ning.
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About author:: MO Hongfei, master student. His research interests include computer vision. |
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