Research on Behavior Recognition of Dairy Goat Based on Multi-model Fusion

Yi Li, Jinglei Tang, Dongjian He
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引用次数: 3

Abstract

In order to accurately identify the behavior of dairy goats in the image, a multi-model fusion convolutional neural network (CNN) method based on the image of dairy goats is proposed. At first, the AlexNet, ResNet50 and Vgg16 models are trained respectively, and the best recognition results of each model are obtained. Then, the attention weight of each model is calculated by feature stitching and other operations. Finally,The feature information of AlexNet, ResNet50 and Vgg16 is combined with attention mechanism to re-weight,and the parameters of the fused multi-model convolutional neural networks are adjusted to obtain the best recognition results of fusion models. Experimental results show that compared with single model and multi-model, the ARV fusion model we proposed achieves higher recognition accuracy, and the average accuracy of each dairy goat behavior is as high as 98.50%.
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基于多模型融合的奶山羊行为识别研究
为了准确识别图像中奶山羊的行为,提出了一种基于奶山羊图像的多模型融合卷积神经网络(CNN)方法。首先分别对AlexNet、ResNet50和Vgg16模型进行训练,得到了每个模型的最佳识别结果。然后,通过特征拼接等操作计算各模型的关注权。最后,将AlexNet、ResNet50和Vgg16的特征信息结合注意机制进行重权重,并对融合多模型卷积神经网络的参数进行调整,获得融合模型的最佳识别结果。实验结果表明,与单模型和多模型相比,我们提出的ARV融合模型具有更高的识别精度,对每只奶山羊行为的平均准确率高达98.50%。
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