融合边缘感知的非接触式养殖凡纳滨对虾测量与体质量估测方法

Non-contact measurement and mass estimation of farmed Litopenaeus vannamei based on edge-aware fused method

  • 摘要: 在高密度养殖系统中,凡纳滨对虾 (Litopenaeus vannamei) 个体间的交叠、遮挡以及残饵与杂质等背景干扰,会导致视野中并非所有个体都具备可用于测量与体质量预估的条件;与此同时,虾体半透明的体表与细小轮廓,进一步增加了直接基于整幅图像进行个体测量与体质量估计的难度。为在复杂环境中获得满足测量要求的个体,以支撑准确的平均体质量预估,本文采用“先筛选、后分割”的两阶段思路。首先,在数据构建阶段定义结构清晰、姿态完整的个体标注为“宜测量个体”,并利用YOLOv11模型从全视野图像中检测并筛选适合测量的目标个体。随后,构建融合边缘感知特征的分割网络,以强化半透明结构与细小轮廓的识别能力,实现高精度个体分割与几何参数提取。基于最小外接矩策略计算虾体长宽特征,并通过幂函数回归模型进行体质量预测。在实测场景中,精细化分割模型Dice得分达0.898 6,对应体长测量的平均绝对误差 (MAE) 为2.46 mm,体质量预测MAE为0.51 g。结果表明,该方法在水体清晰的工厂化循环水养殖系统中,可实现对凡纳滨对虾的精准、非接触式测量,有望成为养殖智能化管理的有效工具。

     

    Abstract: In high-density aquaculture systems, the overlap and occlusion among Litopenaeus vannamei individuals, coupled with interference from the background such as residual feed and debris, suggest that not all visible individuals are suitable for measurement and body mass estimation. Meanwhile, the species' semi-transparent body surface and slender contours further increase the difficulty of directly measuring individuals and estimating body mass from full-view images. To obtain measurement-qualified individuals from such complex environments and accurately estimate the average body mass, we adopted a two-stage strategy of "screening first, segmentation later". During the dataset construction phase, individuals with clear structures and complete postures were annotated as "measurable individuals", and the YOLOv11 model was employed to detect and filter measurable individuals from full-view images. Subsequently, we constructed an edge-aware fused segmentation network to enhance the recognition of semi-transparent structures and fine contours, enabling high-precision individual segmentation and geometric parameter extraction. The shrimp body length and width were calculated using a minimum bounding rectangle strategy, and the weight was estimated via a power-function regression model. In practical experiments, the proposed segmentation model achieved a Dice score of 0.898 6, with a mean absolute error of 2.46 mm in length measurement and 0.51 g in body mass prediction. The results demonstrate that the proposed method can achieve precise non-contact measurement of farmed L. vannamei in clear-water, factory-based recirculating aquaculture systems, making it a promising tool for intelligent aquaculture management.

     

/

返回文章
返回