Small Object Change Detection Based on Multitask Siamese Network

Shreya Sharma, Eiji Kaneko, M. Toda
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引用次数: 0

Abstract

This paper presents a small object, represented by approximately ten pixels in an image, change detection method based on multitask Siamese network for multitemporal SAR images. In our proposed method, not only change detection task but also object classification task is introduced to the network. The classification task is expected to enhance the performance of change detection by providing semantic information of changes and to focus attention of the network towards the target small object class. We tested the proposed method for a real-world application of car parking lot monitoring with 1-meter resolution TerraSAR-X images. Experimental results show that the f-measure of change class is improved by more than 7% over conventional methods based on post-classification, PCA+K-means and Siamese network. Furthermore, car-to-car type change is detected by the proposed method with 25% higher accuracy over the method without the classification task.
基于多任务Siamese网络的小目标变化检测
提出了一种基于多任务Siamese网络的多时相SAR图像小目标变化检测方法。在我们提出的方法中,不仅在网络中引入了变化检测任务,而且还引入了目标分类任务。该分类任务旨在通过提供变化的语义信息来提高变化检测的性能,并将网络的注意力集中在目标小对象类上。我们用1米分辨率的TerraSAR-X图像对停车场监控的实际应用进行了测试。实验结果表明,基于后分类、PCA+K-means和Siamese网络的变化类f测度比传统方法提高了7%以上。此外,与没有分类任务的方法相比,该方法检测到车到车的类型变化的准确率提高了25%。
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