刘苏慧1,2,王光普1,宣传忠1,2*,唐朝辉1,2,贾珺泽1
(1. 内蒙古农业大学机电工程学院,呼和浩特010018,中国;
2. 内蒙古自治区草业与养殖业智能装备工程技术研究中心,呼和浩特010018,中国)
摘要:传统的羊只身份识别主要依赖耳标,但耳标会对动物造成应激,且存在脱落风险,影响长期稳定识别。相比之下,羊脸图像获取具有非接触、低应激的优势。然而,现有基于卷积神经网络的羊脸识别方法在精细分割方面存在不足,限制了在牧场场景中的应用。为此,该研究提出一种面向多视角的羊脸识别方法,将精确分割与高级特征融合相结合。
对左、正、右三个视角的图像进行预处理与分割,引入改进的卷积块注意力模块(I-CBAM)以突出羊脸显著特征,并通过特征金字塔网络(FPN)实现多尺度融合,从而有效整合不同视角的互补信息以提升识别精度。试验结果表明,所提出的 SFMask R-CNN 模型在本数据集上相较基线模型准确率提升9.64个百分点,达到98.65%,为羊只身份的非接触式管理提供可行的技术途径。
关键词:图像分割;羊脸;深度学习;多视角;特征融合
DOI: 10.25165/j.ijabe.20251806.9678
引用信息: Liu S H, Wang G P, Xuan C Z, Tang Z H, Jia J Z. Novel image segmentation model of multi-view sheep face for identity recognition. Int J Agric & Biol Eng, 2025; 18(6): 260–268.
Novel image segmentation model of multi-view sheep face for identity recognition
Suhui Liu1,2, Guangpu Wang1, Chuanzhong Xuan1,2*, Zhaohui Tang1,2, Junze Jia1
(1. College of Mechanical and Electrical Engineering, Inner Mongolia Agricultural University, Hohhot 010018, China;
2. Inner Mongolia Engineering Research Center for Intelligent Facilities on Prataculture and Aquaculture, Hohhot 010018, China)
Abstract: Traditional sheep identification is based on ear tags. However, the application of ear tags not only causes stress to the animals but also leads to loss of ear tags, which affects the correct recognition of sheep identity. In contrast, the acquisition of sheep face images offers the advantages of being non-invasive and stress-free for the animals. Nevertheless, the extant convolutional neural network-based sheep face identification model is prone to the issue of inadequate refinement, which renders its implementation on farms challenging. To address this issue, this study presented a novel sheep face recognition model that employs advanced feature fusion techniques and precise image segmentation strategies. The images were preprocessed and accurately segmented using deep learning techniques, with a dataset constructed containing sheep face images from multiple viewpoints (left, front, and right faces). In particular, the model employs a segmentation algorithm to delineate the sheep face region accurately, utilizes the Improved Convolutional Block Attention Module (I-CBAM) to emphasize the salient features of the sheep face, and achieves multi-scale fusion of the features through a Feature Pyramid Network (FPN). This process guarantees that the features captured from disparate viewpoints can be efficiently integrated to enhance recognition accuracy. Furthermore, the model guarantees the precise delineation of sheep facial contours by streamlining the image segmentation procedure, thereby establishing a robust basis for the precise identification of sheep identity. The findings demonstrate that the recognition accuracy of the Sheep Face Mask Region-based Convolutional Neural Network (SFMask R CNN) model has been enhanced by 9.64% to 98.65% in comparison to the original model. The method offers a novel technological approach to the management of animal identity in the context of sheep husbandry.
Keywords: image segmentation, sheep face, deep learning, multi-view, feature fusion
DOI: 10.25165/j.ijabe.20251806.9678
Citation:Liu S H, Wang G P, Xuan C Z, Tang Z H, Jia J Z. Novel image segmentation model of multi-view sheep face for identity recognition. Int J Agric & Biol Eng, 2025; 18(6): 260–268.