基于改进YOLOv10s的攻击状态下群养猪身份识别
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江苏大学电气信息工程学院 镇江 212013

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TP391.4;TN911.73

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国家自然科学基金(32102598)项目资助


Identification of group-housed pigs under aggression situations based on improved YOLOv10s
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School of Electrical and Information Engineering, Jiangsu University,Zhenjiang 212013, China

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    摘要:

    目前,基于计算机视觉的猪攻击识别主要采用深度学习算法。然而,这些方法仅识别猪群/成对猪的攻击并不能确定哪些猪参与攻击。因此,识别猪个体身份有助于推动攻击识别从群体/成对级细化为个体级。针对群养猪攻击过程中身体变形和重叠等因素对猪身份识别精度的影响,本文提出一种改进YOLOv10s的猪身份识别模型IDBS-YOLOv10s。首先,在骨干网络中采用InceptionNeXtDCNv3替代c2f中的卷积以减小模型的参数和计算量,从而增强YOLOv10s网络提取特征的能力。然后,在颈部采用加权双向特征金字塔网络以增强模型融合不同特征层的能力。接着,在检测头前添加SEAM注意力机制以增强模型提取猪身份的关键特征信息的能力。最后,采用检测头v10detect识别个体猪身份。该模型的身份识别准确率为94.3%,召回率为93.7%,平均精度均值为95.8%,模型权重仅为15.2 MB。结果表明该方法能够识别攻击场景下猪身份。

    Abstract:

    Presently, computer vision-based pig aggression recognition mainly adopts deep learning algorithms. However, these methods only recognize aggression from the pig herd/pairwise pigs and cannot determine which pigs are involved in aggression. Therefore, recognizing the identity of individual pigs helps to refine aggression recognition from the herd/pairwise level to the individual level. Regarding the influence of factors, e.g., body deformation, overlapping, etc., on the accuracy of pig identification in the aggression process of group-housed pigs, an improved YOLOv10s model IDBS-YOLOv10s for pig identification was proposed in this paper. Firstly, the InceptionNeXt-DCNv3 was used to replace the convolution in c2f in the backbone network to reduce the parameter and computational complexity of the model, thereby enhancing the ability of YOLOv10s network to extract features. Secondly, the weighted bidirectional feature pyramid network was used in the Neck layer to enhance the ability of the model to fuse different feature layers. Then, the SEAM attention mechanism was added before the detection head to enhance the ability of the model to extract key feature information of pig identities. Finally, the detection head v10detect was used to recognize the identity of individual pigs. The identification precision of this model was 94.3%, the recall was 93.7%, the mean average precision was 95.8%, and the model weight was only 15.2 MB. The results indicate that this method can be used to recognize the identity of pigs under aggression scenes.

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陈晨,蒋毅,朱伟兴.基于改进YOLOv10s的攻击状态下群养猪身份识别[J].电子测量技术,2026,49(5):190-197

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  • 在线发布日期: 2026-05-08
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