Abstract

The Visible Infrared Imaging Radiometer Suite (VIIRS) fire detection algorithm mostly relies on thermal infrared channels that possess fixed or context-sensitive thresholds. The main channel used for fire identification is the mid-infrared channel, which has relatively low temperature saturation. Therefore, when the high temperature of a fire in this channel is used for initial screening, the threshold is relatively high. Although screening results are tested at different levels, few small fires will be lost under these strict test conditions. However, crop burning fires often occur in East Asia at a small scale and relatively low temperature, such that their radiative characteristics cannot meet the global threshold. Here, we propose a new weighted fire test algorithm to accurately detect small-scale fires based on differences in the sensitivity of test conditions to fire. This method reduces the problem of small fires being ignored because they do not meet some test conditions. Moreover, the adaptive threshold suitable for small fires is selected by bubble sorting according to the radiation characteristics of small fires. Our results indicate that the improved algorithm is more sensitive to small fires, with accuracies of 53.85% in summer and 73.53% in winter, representing an 18.69% increase in accuracy and a 28.91% decline in error rate.

Highlights

  • Alfonso Fernández-Manso andFires, both natural and man-made, occur frequently and possess strong breaking speeds

  • According to the seasonal analysis of small fires caused by crop combustion in the Far

  • This study introduces a fire detection algorithm based on Visible Infrared Imaging Radiometer Suite (VIIRS) data and verifies the accuracy of the detection algorithm

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Summary

Introduction

Alfonso Fernández-Manso andFires, both natural and man-made, occur frequently and possess strong breaking speeds. In East Asia, the first step in crop production within a year is to burn the remaining plants from the preceding year and remove the sundries from the field. These agricultural fires are characterized by small areas and low temperatures [4]. The small fires mentioned in this study are mostly caused by burning of crops by humans and are characterized by small area and short combustion time. Most fire detection algorithms have been designed for global application.

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