基于GAN和目标检测框架的热图像动物检测

K. Khatri, A. S, Jeane Marina D'Souza
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引用次数: 5

摘要

野生动物对全世界的农民来说都是一个挑战,因为它们在夜间非常活跃。大象、鹿、猴子、牛、老鼠、孔雀等动物通过践踏农作物对农作物造成严重破坏。白天保护庄稼比较容易,但晚上保护农田对农民来说却很困难。即使在森林里,动物学家也很难理解动物在夜间的活动模式。为了解决夜间动物的检测和跟踪问题,我们提出了一个基于热图像的动物检测模型。虽然目标检测是计算机视觉中的一个前沿问题,但它们主要关注的是彩色图像而不是热图像。因此,需要一种强大的目标检测技术来检测和识别热图像中的目标。此外,对于普通对象,有大量的数据集可用。然而,缺乏热动物来进行这项研究。这项工作旨在通过从FLIR视频中收集热图像来创建数据集。此外,该数据集缺乏深度学习方法所需的训练数据。因此,ThermalGAN框架使用彩色图像转换为热图像。之后,YOLOv4被训练来估计动物的位置。该模型预测动物位置的平均精度为84.77%,f1得分为94%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Animals in Thermal Imagery for Surveillance using GAN and Object Detection Framework
Wild animals have been a challenge to farmers worldwide as they are very active during the nighttime. Animals like elephants, deer, monkeys, cows, rats, peacocks, and many cause severe damage to crops by trampling. It is easier to protect crops in daylight, but it is tough for farmers to protect the field at night. Even in the forest, it is hard for zoologists to understand the activity pattern of animals at night. To tackle the challenge of detecting and tracking the animals at night, we propose a model that focuses on animal detection on thermal images. Although object detection is an advanced problem in computer vision, they mainly focus on color images rather than thermal images. Hence, a powerful object detection technique is required to detect and recognize the objects in thermal images. In addition, plenty of datasets are available for normal objects. However, there is a dearth of the thermal for animals to carry out the research. The work aims to create the dataset by collecting thermal images from FLIR videos. In addition, the dataset lacks the training data required for deep learning methods. Hence, the ThermalGAN framework uses color images to convert into thermal images. After that, YOLOv4 is trained to estimate the position of the animal. The proposed model predicts the location of animals with an average precision of 84.77% and an F1-score of 94%.
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