Learning Class-Specific Spectral Patterns to Improve Deep Learning Based Scene-Level Fire Smoke Detection from Multi-Spectral Satellite Imagery (2310.01711v1)
Abstract: Detecting fire smoke is crucial for the timely identification of early wildfires using satellite imagery. However, the spatial and spectral similarity of fire smoke to other confounding aerosols, such as clouds and haze, often confuse even the most advanced deep-learning (DL) models. Nonetheless, these aerosols also present distinct spectral characteristics in some specific bands, and such spectral patterns are useful for distinguishing the aerosols more accurately. Early research tried to derive various threshold values from the reflectance and brightness temperature in specific spectral bands to differentiate smoke and cloud pixels. However, such threshold values were determined based on domain knowledge and are hard to generalise. In addition, such threshold values were manually derived from specific combinations of bands to infer spectral patterns, making them difficult to employ in deep-learning models. In this paper, we introduce a DL module called input amplification (InAmp) which is designed to enable DL models to learn class-specific spectral patterns automatically from multi-spectral satellite imagery and improve the fire smoke detection accuracy. InAmp can be conveniently integrated with different DL architectures. We evaluate the effectiveness of the InAmp module on different Convolutional neural network (CNN) architectures using two satellite imagery datasets: USTC_SmokeRS, derived from Moderate Resolution Imaging Spectroradiometer (MODIS) with three spectral bands; and Landsat_Smk, derived from Landsat 5/8 with six spectral bands. Our experimental results demonstrate that the InAmp module improves the fire smoke detection accuracy of the CNN models. Additionally, we visualise the spectral patterns extracted by the InAmp module using test imagery and demonstrate that the InAmp module can effectively extract class-specific spectral patterns.
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- Liang Zhao (353 papers)
- Jixue Liu (39 papers)
- Stefan Peters (3 papers)
- Jiuyong Li (63 papers)
- Norman Mueller (2 papers)
- Simon Oliver (1 paper)