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Multi-Modality Sheep Face Recognition Based on Deep Learning

Sheng Liao, Yan Shu, Tian Fang, Yong Zhou, Guoliang Li, Cheng Zhang, Chao Yao, Zike Wang, Longjie Che

2025Animals7 citationsDOIOpen Access PDF

Abstract

To address the challenge of recognizing sheep faces of the same type, which exhibit significant similarities and varying performance of RGB images under different lighting conditions and angles, this paper proposes a dual-branch multi-modal sheep face recognition model based on the ResNet18 architecture. This model effectively learns geometric features from depth data and texture features from RGB data, thereby enhancing recognition accuracy. Initially, the model employs two InceptionV2 layers, one for the RGB channel and another for the depth channel, to extract specific features from both modalities. Subsequently, the losses from the two modalities are computed. In the mid-stage, the two modalities are fused using the Convolutional Block Attention Module (CBAM), and in the final stage, a residual network is utilized to learn the complementary features between the modalities. Experimental results demonstrate that this model benefits from effective multi-modal fusion, achieving high accuracy in sheep face recognition under complex lighting conditions and various angles.

Topics & Concepts

RGB color modelArtificial intelligenceModalitiesComputer scienceModality (human–computer interaction)Face (sociological concept)ResidualDeep learningModalPattern recognition (psychology)Computer visionFacial recognition systemConvolutional neural networkAlgorithmSociologyChemistrySocial sciencePolymer chemistryFace recognition and analysisIndustrial Vision Systems and Defect DetectionVideo Surveillance and Tracking Methods