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Comparison of SVM and CNN Classification Methods for Infrared Target Recognition

机译:SVM和CNN分类方法在红外目标识别中的比较

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Recognizing targets from infrared images is a very important task for defense system. Recently, deep learning becomes an important solution of the classification problems which can be used for target recognition. In this study, a machine learning approach SVM and a deep learning approach CNN are compared for target recognition on infrared images. This paper applies SVM to measure the linear separability of the classes and obtain the baseline performance for the classes. Then, the constructed CNN model is applied to the dataset. The experimental results show that CNN model increases the overall performance around % 7.7 than SVM on prepared infrared image datasets.
机译:从红外图像识别目标是防御系统非常重要的任务。最近,深度学习已成为可用于目标识别的分类问题的重要解决方案。在这项研究中,比较了机器学习方法SVM和深度学习方法CNN在红外图像上的目标识别。本文应用支持向量机来测量类的线性可分离性,并获得类的基线性能。然后,将构建的CNN模型应用于数据集。实验结果表明,在准备好的红外图像数据集上,CNN模型比SVM的整体性能提高了7.7%左右。

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