基于vision Transformer的公鸡繁殖性能判断模型

Xuhong Lin, Qian Yan, Caicong Wu, Yifei Chen
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引用次数: 0

摘要

随着人们生活水平的提高,对家禽的需求进一步增加。根据精液质量筛选公鸡生殖性能已成为人们关注的方向之一。基于人的视觉对公鸡繁殖性能进行筛选耗时长,且会存在识别误差。本研究结合鸡冠特征与精液质量存在相关性的假设,提出了一种基于计算机视觉的方案来避免这一问题。将采集到的鸡冠数据输入到我们的模型中,该模型可以自动判断公鸡的繁殖性能。我们使用迁移学习,并在不同深度改变最新的细粒度视觉分类算法transfer的权重比,以提高我们数据集的准确率。该模型在测试集中的平均准确率为44.6%(数据集包含2053张训练集图片,测试集包含505张图片),比原始视觉变压器提高1%,比卷积网络模型提高1.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Judgment Model of Cock Reproductive Performance based on Vison Transformer
With the improvement of people's living standards, the demand for poultry has further increased. The screening of cock reproductive performance according to semen quality has become one of the attention directions. It is time-consuming to screen the breeding performance of cocks based on human vision, and there will be recognition errors. In this study, combined with the hypothesis that there is a correlation between cockscomb characteristics and semen quality, a scheme based on computer vision is proposed to avoid this problem. The collected cockscomb data are input into our model, which can automatically judge the breeding performance of cocks. We use transfer learning and change the weight ratio of the latest fine-grained visual classification algorithm Transfg at different depths to improve the accuracy of our data set. The average accuracy of the model in the test set is 44.6% (the data set contains 2053 pictures in the training set and 505 pictures in the test set), which is 1% better than the original vision transformer and 1.3% better than the convolution network model.
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