Nondestructive perch target detection and size measurement from RGB-D images in recirculating aquaculture system

IF 2.2 3区 农林科学 Q2 FISHERIES
Weichen Hu, Xinting Yang, Pingchuan Ma, Kaijie Zhu, Tingting Fu, Chao Zhou
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引用次数: 0

Abstract

In recirculating aquaculture system, precise estimation of perch size from images is essential for developing intelligent management system. However, variations in fish postures and visual field lead to different fish sizes in RGB images, posing challenges for accurate fish detection and localization. To address the above issues, this paper proposes a nondestructive target detection and size measurement method for perch, based on depth information and RGB-D images. The details are as follows: firstly, the capture ability of perch key point features is augmented by a bi-level routing attention (BRA) mechanism. Secondly, the enhanced CSPDarknet53 to 2-Stage FPN(C2f) module and new detection layer are introduced into the model’s backbone and neck, further improving the learning ability of perch features and the recognition accuracy of small-size targets. Finally, based on the detected key point coordinates, the perch size is calculated by combining the three-dimensional transformation from depth camera and measurement model. The experimental results show that the mAP@.5:.95 for key point detection reaches 86.4%, which is 3.6% higher than the baseline model, and the average relative error of perch size measurement is ± 5%. The proposed model provides an important basis for developing scientific feeding strategies and harvest plans.

从循环水产养殖系统的 RGB-D 图像中进行无损鲈鱼目标检测和尺寸测量
在循环水产养殖系统中,从图像中精确估计鲈鱼的大小对开发智能管理系统至关重要。然而,鱼的姿态和视野的变化导致 RGB 图像中鱼的大小不同,给准确的鱼类检测和定位带来了挑战。针对上述问题,本文提出了一种基于深度信息和 RGB-D 图像的鲈鱼无损目标检测和尺寸测量方法。具体方法如下:首先,通过双级路由注意(BRA)机制增强对鲈鱼关键点特征的捕捉能力。其次,在模型的骨干和颈部引入了增强型 CSPDarknet53 至 2 级 FPN(C2f)模块和新的检测层,进一步提高了栖息地特征的学习能力和小尺寸目标的识别精度。最后,根据检测到的关键点坐标,结合深度相机和测量模型的三维变换,计算出鲈鱼的大小。实验结果表明,mAP@.5:.95,关键点检测的准确率达到 86.4%,比基线模型高出 3.6%,鲈鱼大小测量的平均相对误差为 ± 5%。提出的模型为制定科学的饲养策略和收获计划提供了重要依据。
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来源期刊
Aquaculture International
Aquaculture International 农林科学-渔业
CiteScore
5.10
自引率
6.90%
发文量
204
审稿时长
1.0 months
期刊介绍: Aquaculture International is an international journal publishing original research papers, short communications, technical notes and review papers on all aspects of aquaculture. The Journal covers topics such as the biology, physiology, pathology and genetics of cultured fish, crustaceans, molluscs and plants, especially new species; water quality of supply systems, fluctuations in water quality within farms and the environmental impacts of aquacultural operations; nutrition, feeding and stocking practices, especially as they affect the health and growth rates of cultured species; sustainable production techniques; bioengineering studies on the design and management of offshore and land-based systems; the improvement of quality and marketing of farmed products; sociological and societal impacts of aquaculture, and more. This is the official Journal of the European Aquaculture Society.
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