推进犬类健康和护理:使用机器学习的多方面方法

Yasith Wimukthi, Hashen Kottegoda, Dilshan Andaraweera, Pabasara Palihena, H.S.M.H. Fernando, Darshana Kasthurirathnae
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摘要

本研究论文提出了一种综合方法,通过一系列创新技术来提高狗的福祉。首先,我们利用卷积神经网络(CNN)和迁移学习模型开发了一个狗的品种和年龄识别自动化系统。这个系统旨在为狗主人和新收养的人提供一个有效和可靠的解决方案,他们有兴趣了解更多关于他们的狗伙伴。其次,我们建议开发一个系统,该系统使用强化学习来根据各种因素(如狗的品种、年龄、体重、健康状况和情绪状态)生成个性化的膳食计划。该系统旨在为狗主人提供一个可靠而有效的工具,以制定个性化的膳食计划,从而提高他们宠物的整体健康和福祉。第三,我们提出了一个狗疾病识别应用程序,该应用程序利用人工神经网络(ANN)根据狗的症状识别狗的疾病。最后,我们介绍了一个实时远程狗监测系统,该系统使用loT设备和边缘计算来检测攻击性和焦虑的声音。我们的系统提供了与攻击性和焦虑相关的狗叫声的准确分类,这可以帮助狗主人及早发现并应对潜在的问题。这项研究旨在为狗主人和兽医提供一系列技术,帮助他们更好地了解和照顾他们毛茸茸的朋友。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancing Canine Health and Care: A Multifaceted Approach using Machine Learning
This research paper proposes a comprehensive approach to enhance the well-being of dogs through a range of innovative technologies. Firstly, we develop an automated system for dog breed and age identification using a Convolutional Neural Network (CNN) and a transfer learning model. This system aims to provide an efficient and reliable solution for dog owners and new adopters who are interested in discovering more about their canine companions. Secondly, we propose the development of a system that uses Reinforcement Learning to generate personalized meal plans based on a variety of factors such as the dog's breed, age, weight, health status, and emotional state. The system aims to provide dog owners with a reliable and effective tool for generating personalized meal plans that will enhance their pets' overall health and well-being. Thirdly, we present a dog disease recognition application that utilizes an artificial neural network (ANN) for identifying dog diseases based on their symptoms. Lastly, we introduce a real-time remote dog monitoring system using loT devices with edge computing to detect aggressive and anxious sounds. Our system provides an accurate classification of dog sounds related to aggression and anxiety, which can help dog owners detect and respond to potential issues early on. This research aims to provide dog owners and veterinarians with a range of technologies that can help them better understand and care for their furry friends.
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