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Class Activation Map-Based Data Augmentation for Satellite Smoke Scene Detection

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With global warming, increasingly severe forest fires have caused serious damage to the earth’s ecological environment. Remote sensing (RS) technology has become an important means of forest fire monitoring owing… Click to show full abstract

With global warming, increasingly severe forest fires have caused serious damage to the earth’s ecological environment. Remote sensing (RS) technology has become an important means of forest fire monitoring owing to its unique advantages of multiple cycles and wide coverage. In smoke scene detection, the current simple mixed sample data augmentation (MSDA) methods lead to the loss of key objects in images, and training the samples whose images do not match the labels is the main reason for the decline in classifier accuracy. We propose a Class Activation Map-based Mixing method (CAMMix), a new MSDA method. In contrast to previous data augmentation (DA) methods, CAMMix can select the region and degree of mixing throughout the significance map. With the aid of an auxiliary (AUX) classifier, CAMMix generates a mixed mask with class significance, such that the newly generated mixed sample distribution is close to the original data distribution. We also propose an intervention for the coverage method to further prevent the loss of smoke objects. On a smoke dataset (USTC_SmokeRS), CAMMix achieves the best accuracy of 94.95% and 83% for 64% and 8% training sets, respectively. It results that CAMMix and variants provide high classification accuracy and preserve key object information, outperforming the Mixup, CutMix, ResizeMix, and FMix.

Keywords: map; data augmentation; class; scene detection; smoke scene; augmentation

Journal Title: IEEE Geoscience and Remote Sensing Letters
Year Published: 2022

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