Journal of Systems Engineering and Electronics ›› 2024, Vol. 35 ›› Issue (4): 899-905.doi: 10.23919/JSEE.2024.000086
• DEFENCE ELECTRONICS TECHNOLOGY • Previous Articles
Cong XU1(), Zishu HE2(), Haicheng LIU1,*()
Received:
2023-10-11
Accepted:
2024-06-27
Online:
2024-08-18
Published:
2024-08-06
Contact:
Haicheng LIU
E-mail:xucong_0803@126.com;zshe@uestc.edu.cn;liuhaicheng@126.com
About author:
Supported by:
Cong XU, Zishu HE, Haicheng LIU. A lightweight false alarm suppression method in heterogeneous change detection[J]. Journal of Systems Engineering and Electronics, 2024, 35(4): 899-905.
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Table 1
Structure of the proposed network"
Type | Output |
Conv+ReLU | 224×224×64 |
Conv+ReLU | 224×224×64 |
Max pooling | 112×112×64 |
Conv+ReLU | 112×112×128 |
Conv+ReLU | 112×112×128 |
Max pooling | 56×56×128 |
Conv+ReLU | 56×56×256 |
Conv+ReLU | 56×56×256 |
Conv+ReLU | 56×56×256 |
Feature difference | 56×56×256 |
Upsampling | 224×224×256 |
Feature difference | 112×112×128 |
Upsampling | 224×224×128 |
Feature difference | 224×224×64 |
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