基于类激活映射的土地利用分类与目标检测对抗训练方法

Rui Yang, Xin Xu, Zhaozhuo Xu, Chujiang Ding, Fangling Pu
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引用次数: 5

摘要

卷积神经网络(cnn)的解释严重影响我们对深度学习模型内部动态的理解。本文针对土地利用分类和目标检测两种典型遥感任务,提出了一种可解释的训练方法——类激活映射引导对抗训练(CAMAT)。我们首先生成当前批训练样本的类激活图。类激活图是一种特定于类的显著性图,它量化了图像中特定区域对CNN预测结果的贡献。然后,遮挡训练样本中的高贡献区域,利用部分被遮挡的图像作为网络训练的输入。在这种模式下,在训练阶段有目的地干扰网络学习和决策的关键区域,从而使训练出来的模型具有更好的鲁棒性和泛化性能。在经典遥感数据集上进行的实验验证了该算法的有效性和高效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Class Activation Mapping Guided Adversarial Training Method for Land-Use Classification and Object Detection
Interpretation of convolutional neural networks (CNNs) critically influence our understanding of deep learning models’ internal dynamics. In this paper, we demonstrate an interpretable training method, namely class activation mapping guided adversarial training (CAMAT), for two typical remote sensing tasks, land-use classification and object detection. We first generate class activation maps of the current batch training samples. Class activation map is a kind of class-specific saliency map that quantifies the contributions of a particular region in the image to the CNN prediction result. Then, high contribution regions in the training samples are occluded, and we leverage the partial masked images as the inputs for network training. Following this paradigm, the key areas for network learning and decision making are purposefully disturbed in the training phase, thus the trained model could have better performance in robustness and generalization. Experiments conducted on classic remote sensing datasets verified the outperforming effectiveness and efficiency of the proposed CAMAT.
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