基于距离平衡的两阶段深度学习绵羊识别

Xianglei Meng, Pin Tao, Liang Han, DuoJie CaiRang
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引用次数: 5

摘要

绵羊鉴定在绵羊精密育种中起着重要的作用。本文提出了一种基于计算机视觉和深度学习的识别方法。整个过程分为两个连接阶段。绵羊人脸检测阶段首先对图像中的候选区域进行搜索。我们采用YOLO框架,并使用无重叠模型对其进行优化。在不同的骨干网上进行了对比研究。、EfficentNet、ResNet等第二阶段将候选羊面区域的特征向量提取为2048向量;距离平衡策略用于最大化不同羊面之间的距离,最小化相同羊面之间的距离。我们还引入了一个包含547只羊的数据集,其中包含5000多张图像,适用于羊的识别任务。所有图像都用边界框进行标注,标记羊脸的位置和大小,并用ID号作为羊的身份标记。在该数据集上的实验表明,本文提出的方法可以达到85%的绵羊识别准确率,并且以高效网为骨干网络可以压倒其他网络。对于原始图像,该算法可以在0.024秒内检测到羊脸,在0.16秒内得到识别结果。与传统的RFID和耳标技术相比,绵羊人脸识别的速度快、精度高,在不久的将来在畜牧业中具有很大的应用潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sheep Identification with Distance Balance in Two Stages Deep Learning
Sheep identification plays an important role in precision sheep breeding. In this paper, we propose an identification method based on computer vision and deep learning. The whole procedure is divided into two conjunction stages. Sheep face detection stage searches the candidate area in the image firstly. We adopt YOLO framework and optimize it with an overlap-free model. A comparative study is analyzed on various backbone networkse.g., EfficentNet, ResNet, etc. The second stage extracts the feature vector of the candidate sheep face area into a 2048 vector. The distance balance policy is used to maximize the distance of different sheep faces and to minimize that of the same ones. We also introduce a dataset of 547 sheep containing over 5000 images that are suitable for sheep identification task. All images are annotated with the bounding box to mark the position and size of the sheep face, and tag with the ID number as the identity of the sheep. Experiments on this dataset show that our proposed method can achieve the sheep identification accuracy in 85%, and the EfficientNet as the backbone can overwhelm the other networks. For an original image, it can detect the sheep face in 0.024s, and get the recognition result in 0.16s. Compared with the traditional RFID and ear-tag technology, the fast speed and high accuracy of sheep face identification show the great potential of using it in husbandry in the near future.
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