You Only Look Once (YOLO) is a single-stage object detection model popular for real-time object detection, accuracy, and speed. This paper investigates the YOLOv5 model to identify cattle in the yards. The current solution to cattle identification includes radio-frequency identification (RFID) tags. The problem occurs when the RFID tag is lost or damaged. A biometric solution identifies the cattle and helps to assign the lost or damaged tag or replace the RFID-based system. Muzzle patterns in cattle are unique biometric solutions like a fingerprint in humans. This paper aims to present our recent research in utilizing five popular object detection models, looking at the architecture of YOLOv5, investigating the performance of eight backbones with the YOLOv5 model, and the influence of mosaic augmentation in YOLOv5 by experimental results on the available cattle muzzle images. Finally, we concluded with the excellent potential of using YOLOv5 in automatic cattle identification. Our experiments show YOLOv5 with transformer performed best with mean Average Precision (mAP) 0.5 (the average of AP when the IoU is greater than 50%) of 0.995, and mAP 0.5:0.95 (the average of AP from 50% to 95% IoU with an interval of 5%) of 0.9366. In addition, our experiments show the increase in accuracy of the model by using mosaic augmentation in all backbones used in our experiments. Moreover, we can also detect cattle with partial muzzle images.
翻译:您只看一次( YOLOOO) 是一个单一阶段的物体探测模型, 实时物体检测、 准确性和速度都是很受欢迎的。 本文旨在展示我们最近关于使用五种流行物体探测模型的研究, 查看YOLOv5 模型的架构, 以辨别院内牛群。 目前对牛群识别的解决方案包括无线电频率识别标记。 问题发生在RFID标签丢失或损坏时。 生物鉴别解决方案会发现牛群, 帮助分配丢失或损坏的标签或替换基于RFID的系统。 牛群中的毛片模式是独特的生物鉴别解决方案, 像人体的指纹一样。 本文旨在介绍我们最近关于使用五种流行物体探测模型的研究, 查看YOLOv5 模型, 以YOLOOV5 模型来调查八根脊椎的性能。 通过实验结果在YOLOVOV5 中测试结果, 我们的IOOOOV5, 和 0.95年的底部域内, 我们的IU 平均值增加了0. 0. 0. 0.95 。