基于超轻量化孪生网络的自然场景奶牛单目标跟踪方法
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内蒙古自治区自然科学基金项目(2022MS06008)


Single Target Tracking Method for Dairy Cows in Natural Scenes
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    摘要:

    针对跟踪模型泛化能力差、跟踪模型正样本选取质量低、深层模型参数量大不利于部署等问题,本文提出了超轻量化孪生网络模型Siamese-remo。首先结合传统随机采样方法和go-turn方法,设计出新型的正负样本选取策略,增加模型泛化能力;其次采用shiftbox-remo的数据增强方式均匀正样本分布,并提升正样本采集质量;然后通过改进后的超轻量化Mobileone-remo网络提取特征,一定程度减少深层网络对跟踪平移不变性的破坏,并预设不同特征融合参数,单独训练网络分类和回归;最终加入Center-rank loss函数,根据样本点位置影响置信度、IOU排名,对网络分类回归策略进行优化。实验证明,自然场景下奶牛单目标跟踪模型期望平均重合度(Expected average overlap, EAO)达到0.475,相对于基线模型提升0.078,与现有跟踪器对比取得了较好的成绩,且参数量仅为现有主流算法的1/20,为后续自然场景下奶牛身份识别与目标跟踪系统提供了技术支持。

    Abstract:

    The cow single target tracking technology is a new technology proposed for intelligent management of dairy farms and it is the basis for the research of cow multi-objective tracking. The presence of padding in the deep network will destroy the translation invariance of the tracking model, the number of redundant parameters, and other addressing issues such as low quality of positive sample selection for tracking models, poor generalization ability of tracking models will also affect the cow tracking performance. Thus a high-performance cow single-target tracking method was proposed. Firstly, Siamese-remo model was used to extract features by improving Mobileone network to reduce the damage of tracking translation invariance by deep network to some extent, and different feature fusion parameters were preseted to train network classification and regression respectively; secondly, traditional method and go-turn method were combined to design a positive and negative sample selection strategy to improve the quality of positive sample collection; then special data enhancement was used to increase the generalization ability of the model; finally, Center-rank loss function was added to optimize the network classification and regression strategy according to the sample point location affecting confidence and IOU ranking. The experiment proved that the expected average overlap (EAO) of the cow single target tracking model in natural scenes reached 0.475, which was improved by 0.078 relative to the baseline model, and achieved better results compared with existing trackers. The number of parameters was only onetwentieth of the existing mainstream algorithms, which provided strong technical support for the subsequent cow identification and target tracking system.

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刘月峰,刘博,暴祥,刘好峰,王越.基于超轻量化孪生网络的自然场景奶牛单目标跟踪方法[J].农业机械学报,2023,54(10):282-293. LIU Yuefeng, LIU Bo, BAO Xiang, LIU Haofeng, WANG Yue. Single Target Tracking Method for Dairy Cows in Natural Scenes[J]. Transactions of the Chinese Society for Agricultural Machinery,2023,54(10):282-293.

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  • 收稿日期:2023-04-11
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  • 在线发布日期: 2023-06-05
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