犬类睡眠姿势识别的迁移学习方法

Achini Nisansala, Rukshani Puvnendran
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引用次数: 0

摘要

识别任何生物不同姿势的能力是准确了解其身心健康状况的先决条件。狗是最友好和社交的犬类,它们为人类同伴提供爱和安全,成为它们最好的朋友。目前的研究旨在通过狗的睡眠姿势来探索狗的健康状况的重要信息。本文研究并比较了VGG16、Xception和ResNet50三种深度迁移学习算法和卷积神经网络在人工采集和增强的近4000张狗狗四种不同睡眠姿势图像数据集上的分类性能。我们的模型显示,ResNet50优于所有其他算法,达到了最高的S7.35%的准确率。总的来说,我们的发现将有助于残疾和特殊需要的狗和他们的主人识别狗的健康状况和需求,使用睡眠姿势,为他们提供更舒适和更好的生活。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Canine Sleeping Posture Identification using Transfer Learning
The ability to recognize different postures of any living creature is a prerequisite for getting an accurate idea about their mental and physical well-being. Dogs are the most friendly and social canine breeds that provide love and security for human companions being their best friend at all times. The present study aimed at paying the initiatives at exploring important information about the wellbeing of the dogs with their sleeping postures. The paper studies and compared the classification performance of three deep transfer learning algorithms: VGG16, Xception, and ResNet50, and Convolutional Neural Network on a manually collected and augmented dataset of nearly 4000 images consisting of four different sleeping postures of dogs. Our model reveals that ResNet50 outperforms all other algorithms and achieved the highest accuracy of S7.35%. Overall, our finding would help disabled and special requirement dogs and their owners to identify canine’s health conditions and requirements using the sleeping postures and provide a more comfortable and better life for them.
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