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A Study on the Detection of Cattle in UAV Images Using Deep Learning

机译:深入学习的UAV图像中养牛检测研究

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摘要

Unmanned aerial vehicles (UAVs) are being increasingly viewed as valuable tools to aid the management of farms. This kind of technology can be particularly useful in the context of extensive cattle farming, as production areas tend to be expansive and animals tend to be more loosely monitored. With the advent of deep learning, and convolutional neural networks (CNNs) in particular, extracting relevant information from aerial images has become more effective. Despite the technological advancements in drone, imaging and machine learning technologies, the application of UAVs for cattle monitoring is far from being thoroughly studied, with many research gaps still remaining. In this context, the objectives of this study were threefold: (1) to determine the highest possible accuracy that could be achieved in the detection of animals of the Canchim breed, which is visually similar to the Nelore breed (Bos taurus indicus); (2) to determine the ideal ground sample distance (GSD) for animal detection; (3) to determine the most accurate CNN architecture for this specific problem. The experiments involved 1853 images containing 8629 samples of animals, and 15 different CNN architectures were tested. A total of 900 models were trained (15 CNN architectures × 3 spacial resolutions × 2 datasets × 10-fold cross validation), allowing for a deep analysis of the several aspects that impact the detection of cattle using aerial images captured using UAVs. Results revealed that many CNN architectures are robust enough to reliably detect animals in aerial images even under far from ideal conditions, indicating the viability of using UAVs for cattle monitoring.
机译:无人驾驶航空公司(无人机)越来越多地被视为有价值的工具,以帮助农场管理。这种技术在广泛的养牛种植的背景下可以特别有用,因为生产区域往往是膨胀的,动物往往会更加松散地监测。随着深度学习的出现,特别是卷积神经网络(CNNS),特别是从航拍图像中提取相关信息已经变得更加有效。尽管在无人机,成像和机器学习技术方面进行了技术进步,但是除了牛监测的应用程序远远不受彻底研究,许多研究差距仍然存在。在这种情况下,本研究的目的是三倍:(1)确定在检测Canchim品种的动物中可以实现的最高精度,这在视觉上类似于Nelore品种(Bos Taurus Indumus); (2)确定动物检测的理想地面样本距离(GSD); (3)确定此特定问题的最准确的CNN架构。该实验涉及含有8629个动物样品的1853个图像,并测试了15种不同的CNN架构。训练了900种型号(15个CNN架构×3个空间分辨率×2数据集×10倍交叉验证),允许深入分析利用使用UAV捕获的空中图像影响牛的几个方面。结果表明,许多CNN架构足够强大,以便在远离理想条件下可靠地检测在空中图像中的动物,表明使用无人机对牛监测的可行性。

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