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Tropical Cyclone Detection from the Thermal Infrared Sensor IASI Data Using the Deep Learning Model YOLOv3

Tropical cyclone (TC) detection is essential to mitigate natural disasters, as TCs can cause significant damage to life, infrastructure and economy. In this study, we applied the deep learning object detection model YOLOv3 to detect TCs in the North Atlantic Basin, using data from the Thermal InfraRed (TIR) Atmospheric Sounding Interferometer (IASI) onboard the Metop satellites. IASI measures the outgoing TIR radiation of the Earth-Atmosphere. For the first time, we provide a proof of concept of the possibility of constructing images required by YOLOv3 from a TIR remote sensor that is not an imager. We constructed a dataset by selecting 50 IASI radiance channels and using them to create images, which we labeled by constructing bounding boxes around TCs using the hurricane database HURDAT2. We trained the YOLOv3 on two settings, first with three “best” selected channels, then using an autoencoder to exploit all 50 channels. We assessed its performance with the Average Precision (AP) metric at two different intersection over union (IoU) thresholds (0.1 and 0.5). The model achieved promising results with AP at IoU threshold 0.1 of 78.31%. Lower performance was achieved with IoU threshold 0.5 (31.05%), showing the model lacks precision regarding the size and position of the predicted boxes. Despite that, we show YOLOv3 demonstrates great potential for TC detection using TIR instruments data.
autoencoder, [SDU.STU.ME] Sciences of the Universe [physics]/Earth Sciences/Meteorology, 550, IASI, Télédétection, tropical cyclone, deep learning, [SDU.STU.ME]Sciences of the Universe [physics]/Earth Sciences/Meteorology, tropical cyclone detection, 551, [SDU.STU.CL] Sciences of the Universe [physics]/Earth Sciences/Climatology, machine learning, Phénomènes atmosphériques, [SDU.STU.CL]Sciences of the Universe [physics]/Earth Sciences/Climatology, Meteorology. Climatology, convolutional neural networks, QC851-999
autoencoder, [SDU.STU.ME] Sciences of the Universe [physics]/Earth Sciences/Meteorology, 550, IASI, Télédétection, tropical cyclone, deep learning, [SDU.STU.ME]Sciences of the Universe [physics]/Earth Sciences/Meteorology, tropical cyclone detection, 551, [SDU.STU.CL] Sciences of the Universe [physics]/Earth Sciences/Climatology, machine learning, Phénomènes atmosphériques, [SDU.STU.CL]Sciences of the Universe [physics]/Earth Sciences/Climatology, Meteorology. Climatology, convolutional neural networks, QC851-999
citations This is an alternative to the "Influence" indicator, which also reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically).11 popularity This indicator reflects the "current" impact/attention (the "hype") of an article in the research community at large, based on the underlying citation network.Top 10% influence This indicator reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically).Average impulse This indicator reflects the initial momentum of an article directly after its publication, based on the underlying citation network.Top 10%
