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A novel visible and infrared image fusion method based on convolutional neural network for pig-body feature detection
by
Zhong, Zhen
in
Algorithms
/ Artificial neural networks
/ Body temperature
/ Computer Communication Networks
/ Computer Science
/ Computer vision
/ Data Structures and Information Theory
/ Feature extraction
/ Image processing
/ Image segmentation
/ Infrared imagery
/ Infrared imaging
/ Multimedia Information Systems
/ Neural networks
/ Special Purpose and Application-Based Systems
2022
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A novel visible and infrared image fusion method based on convolutional neural network for pig-body feature detection
by
Zhong, Zhen
in
Algorithms
/ Artificial neural networks
/ Body temperature
/ Computer Communication Networks
/ Computer Science
/ Computer vision
/ Data Structures and Information Theory
/ Feature extraction
/ Image processing
/ Image segmentation
/ Infrared imagery
/ Infrared imaging
/ Multimedia Information Systems
/ Neural networks
/ Special Purpose and Application-Based Systems
2022
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Do you wish to request the book?
A novel visible and infrared image fusion method based on convolutional neural network for pig-body feature detection
by
Zhong, Zhen
in
Algorithms
/ Artificial neural networks
/ Body temperature
/ Computer Communication Networks
/ Computer Science
/ Computer vision
/ Data Structures and Information Theory
/ Feature extraction
/ Image processing
/ Image segmentation
/ Infrared imagery
/ Infrared imaging
/ Multimedia Information Systems
/ Neural networks
/ Special Purpose and Application-Based Systems
2022
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A novel visible and infrared image fusion method based on convolutional neural network for pig-body feature detection
Journal Article
A novel visible and infrared image fusion method based on convolutional neural network for pig-body feature detection
2022
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Overview
The visible (VI) and infrared (IR) image fusion has been an active research task because of its higher segmentation accuracy rate during recent years. However, traditional VI and IR image fusion algorithms could not extract more texture and edge features of fused image. In order to more effectively extract pig-body shape and temperature feature, a new multisource fusion algorithm for shape segmentation and temperature extraction is presented based on convolutional neural network (CNN), named as MCNNFuse. Firstly, visible and infrared images are fused by modified CNN fusion model. Then, shape feature is extracted by Otsu threshold and morphological operation in view of fusion results. Finally, pig-body temperature feature is extracted based on shape segmentation. Experimental results show that segmentation model based on presented fusion method is capable of achieving 1.883–7.170% higher average segmentation accuracy rate than prevalent traditional and previously published methods. Furthermore, it establishes the groundwork for accurate measurement of pig-body temperature.
Publisher
Springer US,Springer Nature B.V
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