Suppr超能文献

基于深度学习的光周期对肉鸭活跃度的调控

Regulation of Meat Duck Activeness through Photoperiod Based on Deep Learning.

作者信息

Duan Enze, Han Guofeng, Zhao Shida, Ma Yiheng, Lv Yingchun, Bai Zongchun

机构信息

Agricultural Facilities and Equipment Research Institute, Jiangsu Academy of Agriculture Science, Nanjing 210014, China.

Key Laboratory of Protected Agriculture Engineering in the Middle and Lower Reaches of Yangtze River, Ministry of Agriculture and Rural Affairs, Nanjing 210014, China.

出版信息

Animals (Basel). 2023 Nov 14;13(22):3520. doi: 10.3390/ani13223520.

Abstract

The regulation of duck physiology and behavior through the photoperiod holds significant importance for enhancing poultry farming efficiency. To clarify the impact of the photoperiod on group-raised duck activeness and quantify duck activeness, this study proposes a method that employs a multi-object tracking model to calculate group-raised duck activeness. Then, duck farming experiments were designed with varying photoperiods as gradients to assess this impact. The constructed multi-object tracking model for group-raised ducks was based on YOLOv8. The C2f-Faster-EMA module, which combines C2f-Faster with the EMA attention mechanism, was used to improve the object recognition performance of YOLOv8. Furthermore, an analysis of the tracking performance of Bot-SORT, ByteTrack, and DeepSORT algorithms on small-sized duck targets was conducted. Building upon this foundation, the duck instances in the images were segmented to calculate the distance traveled by individual ducks, while the centroid of the duck mask was used in place of the mask regression box's center point. The single-frame average displacement of group-raised ducks was utilized as an intuitive indicator of their activeness. Farming experiments were conducted with varying photoperiods (24L:0D, 16L:8D, and 12L:12D), and the constructed model was used to calculate the activeness of group-raised ducks. The results demonstrated that the YOLOv8x-C2f-Faster-EMA model achieved an object recognition accuracy (mAP@50-95) of 97.9%. The improved YOLOv8 + Bot-SORT model achieved a multi-object tracking accuracy of 85.1%. When the photoperiod was set to 12L:12D, duck activeness was slightly lower than that of the commercial farming's 24L:0D lighting scheme, but duck performance was better. The methods and conclusions presented in this study can provide theoretical support for the welfare assessment of meat duck farming and photoperiod regulation strategies in farming.

摘要

通过光周期调节鸭的生理和行为对提高家禽养殖效率具有重要意义。为了阐明光周期对群体饲养鸭活动的影响并量化鸭的活动,本研究提出了一种利用多目标跟踪模型来计算群体饲养鸭活动的方法。然后,以不同光周期为梯度设计了养鸭实验来评估这种影响。构建的群体饲养鸭多目标跟踪模型基于YOLOv8。将C2f-Faster与EMA注意力机制相结合的C2f-Faster-EMA模块用于提高YOLOv8的目标识别性能。此外,还对Bot-SORT、ByteTrack和DeepSORT算法在小型鸭目标上的跟踪性能进行了分析。在此基础上,对图像中的鸭实例进行分割以计算个体鸭的移动距离,同时用鸭掩码的质心代替掩码回归框的中心点。群体饲养鸭的单帧平均位移被用作其活动的直观指标。进行了不同光周期(24L:0D、16L:8D和12L:12D)的养殖实验,并使用构建的模型计算群体饲养鸭的活动。结果表明,YOLOv8x-C2f-Faster-EMA模型的目标识别准确率(mAP@50-95)达到97.9%。改进后的YOLOv8+Bot-SORT模型的多目标跟踪准确率达到85.1%。当光周期设置为12L:12D时,鸭的活动略低于商业养殖的24L:0D光照方案,但鸭的性能更好。本研究提出的方法和结论可为肉鸭养殖的福利评估和养殖中的光周期调控策略提供理论支持。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e833/10668642/d6b5a5b3a424/animals-13-03520-g001.jpg

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验