H. M. Peixoto, R. Menezes, John Victor Alves Luiz, A. M. Henriques-Alves, Rossana Moreno Santa Cruz
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引用次数: 6
摘要
本研究开发的计算工具基于卷积神经网络和You Only Look Once (YOLO)算法,用于在行为神经科学实验中记录的视频中检测和跟踪小鼠。我们分析了一组由13622张图像组成的数据,这些图像由该领域三个重要研究的行为视频组成。训练集使用50%的图像,25%用于验证,25%用于测试。结果表明,该系统对全版和小版YOLO的平均精度(mAP)分别为90.79%和90.75%。考虑到结果的高准确性,开发的工作使实验人员能够以可靠和无规避的方式进行小鼠跟踪。
The computational tool developed in this study is based on convolutional neural networks and the You Only Look Once (YOLO) algorithm for detecting and tracking mice in videos recorded during behavioral neuroscience experiments. We analyzed a set of data composed of 13622 images, made up of behavioral videos of three important researches in this area. The training set used 50% of the images, 25% for validation, and 25% for the tests. The results show that the mean Average Precision (mAP) reached by the developed system was 90.79% and 90.75% for the Full and Tiny versions of YOLO, respectively. Considering the high accuracy of the results, the developed work allows the experimentalists to perform mice tracking in a reliable and non-evasive way.