发现羔羊隐藏的个性:利用深度卷积神经网络(DCNNs)的力量从面部图像中预测气质

IF 2.2 2区 农林科学 Q1 AGRICULTURE, DAIRY & ANIMAL SCIENCE
Cihan Çakmakçı , Danielle Rodrigues Magalhaes , Vitor Ramos Pacor , Douglas Henrique Silva de Almeida , Yusuf Çakmakçı , Selma Dalga , Csaba Szabo , Gustavo A. María , Cristiane Gonçalves Titto
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引用次数: 0

摘要

本研究的目的是确定一种更实用、更可靠的替代手动气质分类方法,该方法依赖于单独接受各种测试的动物的行为反应。具体而言,本研究基于深度卷积神经网络(DCNNs)评估了面部图像信息与气质之间的相关性,以基于羔羊的面部图像预测其气质。在第一阶段,根据从行为测试中获得的数据,对羔羊的性情进行分类,以确定羔羊性情的基本事实。这使我们能够在第二阶段基于面部图像和来自行为测试的相应气质标签来训练(70%)、验证(20%)和测试(10%)深度学习模型。将自定义深度卷积神经网络(C-DCNN)的性能与用于图像分类的预训练VGG19和Xception模型的性能进行了比较。Xception模型的训练准确率达到81%,这表明它很好地学习了数据中的底层模式;然而,较低的验证(0.75)和测试(0.58)精度表明,它过度拟合了训练数据,并且不能很好地推广到新样本。VGG19模型产生了较低的训练(0.59)、验证(0.46)和测试(0.34)准确率,这表明它没有像Xception模型那样学习数据中的基本模式。此外,其精确度(0.47)、召回率(0.42)和F1分数(0.41)表明,该模型在正确识别类别方面表现不佳。C-DCNN产生了60%的中等准确率,这表明该模型能够以60%的准确率预测羔羊的气质特征,这比随机猜测(33%的准确率)要好,并证明了该方法在评估气质方面的潜力。C-DCNN的准确度(0.69)、召回率(0.61)和F1评分(0.63)表明其正确识别阳性病例的能力中等;然而,原始数据集的小尺寸仍然是研究的局限性,因为它可能导致了模型的次优性能。为了验证这种方法,需要基于更大、更多样的数据集进行进一步的研究。我们将继续研究深度学习和计算机视觉在基于大型、多样化数据集的面部图像中预测动物性格特征的潜力,这可能会为评估动物性情和改善动物福利带来更有效、更客观的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovering the hidden personality of lambs: Harnessing the power of Deep Convolutional Neural Networks (DCNNs) to predict temperament from facial images

The objective of this study was to define a more practical and reliable alternative to manual temperament classification methods that rely on the behavioral responses of animals individually subjected to various tests. Specifically, this study evaluated the correlation between facial image information and temperament based on deep convolutional neural networks (DCNNs) to predict the temperament of lambs based on their facial images. In the first phase, the lambs were categorized as to their temperament based on data acquired from a behavioral test to establish a ground truth for the temperament of the lambs. This enabled us to train (70%), validate (20%), and test (10%) deep-learning models in the second phase based on facial images and the corresponding temperament labels derived from the behavioral test. The performance of a custom deep convolutional neural network (C-DCNN) was compared to that of pre-trained VGG19 and Xception models for image classification. The Xception model achieved a training accuracy of 81%, which indicated that it learned well the underlying patterns in the data; however, lower validation (0.75) and test (0.58) accuracies indicate that it overfit the training data and did not generalize well to new samples. The VGG19 model, produced lower training (0.59), validation (0.46), and test (0.34) accuracies, which indicated that it did not learn the underlying patterns in the data as well as the Xception model. Furthermore, its precision (0.47), recall (0.42), and F1 score (0.41) indicated that the model performed poorly in identifying the classes correctly. The C-DCNN produced a moderate accuracy of 60%, which indicated that the model was able to predict the temperament traits of lambs with an accuracy of 60%, which was better than random guessing (33% accuracy), and demonstrated the potential of this approach in assessing temperament. The C-DCNN precision (0.69), recall (0.61) and F1 score (0.63) indicated that it had a moderate ability to correctly identify positive cases; however, the small size of the original dataset remains a limitation of the study because it might have caused the suboptimal performance of the models. To validate this approach, further research is needed based on a larger and more diverse dataset. We will continue to investigate the potential of deep learning and computer vision to predict animal personality traits from facial images based on large, diverse datasets, which might lead to more efficient and objective methods for assessing animal temperament and improving animal welfare.

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来源期刊
Applied Animal Behaviour Science
Applied Animal Behaviour Science 农林科学-行为科学
CiteScore
4.40
自引率
21.70%
发文量
191
审稿时长
18.1 weeks
期刊介绍: This journal publishes relevant information on the behaviour of domesticated and utilized animals. Topics covered include: -Behaviour of farm, zoo and laboratory animals in relation to animal management and welfare -Behaviour of companion animals in relation to behavioural problems, for example, in relation to the training of dogs for different purposes, in relation to behavioural problems -Studies of the behaviour of wild animals when these studies are relevant from an applied perspective, for example in relation to wildlife management, pest management or nature conservation -Methodological studies within relevant fields The principal subjects are farm, companion and laboratory animals, including, of course, poultry. The journal also deals with the following animal subjects: -Those involved in any farming system, e.g. deer, rabbits and fur-bearing animals -Those in ANY form of confinement, e.g. zoos, safari parks and other forms of display -Feral animals, and any animal species which impinge on farming operations, e.g. as causes of loss or damage -Species used for hunting, recreation etc. may also be considered as acceptable subjects in some instances -Laboratory animals, if the material relates to their behavioural requirements
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