Abstract

A variety of environmental analysis applications have been advanced by the use of satellite remote sensing. Smoke detection based on satellite imagery is imperative for wildfire detection and monitoring. However, the commonly used smoke detection methods mainly focus on smoke discrimination from a few specific classes, which reduces their applicability in different regions of various classes. To this end, in this paper, we present a new large-scale satellite imagery smoke detection benchmark based on Moderate Resolution Imaging Spectroradiometer (MODIS) data, namely USTC_SmokeRS, consisting of 6225 satellite images from six classes (i.e., cloud, dust, haze, land, seaside, and smoke) and covering various areas/regions over the world. To build a baseline for smoke detection in satellite imagery, we evaluate several state-of-the-art deep learning-based image classification models. Moreover, we propose a new convolution neural network (CNN) model, SmokeNet, which incorporates spatial and channel-wise attention in CNN to enhance feature representation for scene classification. The experimental results of our method using different proportions (16%, 32%, 48%, and 64%) of training images reveal that our model outperforms other approaches with higher accuracy and Kappa coefficient. Specifically, the proposed SmokeNet model trained with 64% training images achieves the best accuracy of 92.75% and Kappa coefficient of 0.9130. The model trained with 16% training images can also improve the classification accuracy and Kappa coefficient by at least 4.99% and 0.06, respectively, over the state-of-the-art models.

Highlights

  • Wildfire is a destructive natural disaster that poses serious threats for human lives, property, and ecosystems [1]

  • We propose a new convolution neural network (CNN)-based method to detect the smoke scenes using satellite remote sensing

  • We developed the SmokeNet model merging the spatial and channel-wise attention, which can fully exploit the class-discriminative features for scene classification

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Summary

Introduction

Wildfire is a destructive natural disaster that poses serious threats for human lives, property, and ecosystems [1]. Fire smoke can be a significant signal of biomass burning, which plays an important role in wildfire detection. Improved smoke detection is important in the identification of new fires, as well as in the subsequent fire rescue and emergency management [4]. The identification of smoke using satellite data is challenging because the fire smoke has varying shapes, colors, scopes, and spectral overlaps [2,3,6]. This makes it difficult to distinguish smoke from similar disasters and complex land cover types, such as clouds, dust, haze, and so on

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