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Thermal Object Detection in Difficult Weather Conditions Using YOLO (CROSBI ID 283381)

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Kristo, Mate ; Ivasic-Kos, Marina ; Pobar, Miran Thermal Object Detection in Difficult Weather Conditions Using YOLO // IEEE access, 8 (2020), 125459-125476. doi: 10.1109/access.2020.3007481

Podaci o odgovornosti

Kristo, Mate ; Ivasic-Kos, Marina ; Pobar, Miran

engleski

Thermal Object Detection in Difficult Weather Conditions Using YOLO

Global terrorist threats and illegal migration have intensified concerns for the security of citizens, and every effort is made to exploit all available technological advances to prevent adverse events and protect people and their property. Due to the ability to use at night and in weather conditions where RGB cameras do not perform well, thermal cameras have become an important component of sophisticated video surveillance systems. In this paper, we investigate the task of automatic person detection in thermal images using convolutional neural network models originally intended for detection in RGB images. We compare the performance of the standard state-of-the-art object detectors such as Faster R-CNN, SSD, Cascade R-CNN, and YOLOv3, that were retrained on a dataset of thermal images extracted from videos that simulate illegal movements around the border and in protected areas. Videos are recorded at night in clear weather, rain, and in the fog, at different ranges, and with different movement types. YOLOv3 was significantly faster than other detectors while achieving performance comparable with the best, so it was used in further experiments. We experimented with different training dataset settings in order to determine the minimum number of images needed to achieve good detection results on test datasets. We achieved excellent detection results with respect to average accuracy for all test scenarios although a modest set of thermal images was used for training. We test our trained model on different well known and widely used thermal imaging datasets as well. In addition, we present the results of the recognition of humans and animals in thermal images, which is particularly important in the case of sneaking around objects and illegal border crossings. Also, we present our original thermal dataset used for experimentation that contains surveillance videos recorded at different weather and shooting conditions.

Convolutional neural networks, object detector, person detection, surveillance, thermal imaging, YOLO

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Podaci o izdanju

8

2020.

125459-125476

objavljeno

2169-3536

10.1109/access.2020.3007481

Povezanost rada

Informacijske i komunikacijske znanosti, Računarstvo

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