A study of duck detection using deep neural network based on RetinaNet model in smart farming.

IF 2.7 3区 农林科学 Q1 AGRICULTURE, DAIRY & ANIMAL SCIENCE
Journal of Animal Science and Technology Pub Date : 2024-07-01 Epub Date: 2024-07-31 DOI:10.5187/jast.2023.e76
Jeyoung Lee, Hochul Kang
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引用次数: 0

Abstract

In a duck cage, ducks are placed in various states. In particular, if a duck is overturned and falls or dies, it will adversely affect the growing environment. In order to prevent the foregoing, it was necessary to continuously manage the cage for duck growth. This study proposes a method using an object detection algorithm to improve the foregoing. Object detection refers to the work to perform classification and localization of all objects present in the image when an input image is given. To use an object detection algorithm in a duck cage, data to be used for learning should be made and the data should be augmented to secure enough data to learn from. In addition, the time required for object detection and the accuracy of object detection are important. The study collected, processed, and augmented image data for a total of two years in 2021 and 2022 from the duck cage. Based on the objects that must be detected, the data collected as such were divided at a ratio of 9 : 1, and learning and verification were performed. The final results were visually confirmed using images different from the images used for learning. The proposed method is expected to be used for minimizing human resources in the growing process in duck cages and making the duck cages into smart farms.

基于 RetinaNet 模型的深度神经网络在智能农业中的鸭子检测研究。
在鸭笼中,鸭子被放置在不同的状态下。特别是,如果有鸭子翻倒摔伤或死亡,就会对鸭子的生长环境造成不利影响。为了防止上述情况发生,有必要对鸭笼进行持续管理,以利于鸭子生长。本研究提出了一种使用物体检测算法的方法来改善上述问题。物体检测是指在输入图像时,对图像中存在的所有物体进行分类和定位的工作。要在鸭笼中使用物体检测算法,应制作用于学习的数据,并对数据进行扩充,以确保有足够的数据可供学习。此外,物体检测所需的时间和物体检测的准确性也很重要。本研究收集、处理和增强了 2021 年和 2022 年共两年的鸭笼图像数据。根据必须检测的对象,将收集到的数据按 9 : 1 的比例进行分割,并进行学习和验证。使用与学习所用图像不同的图像对最终结果进行视觉确认。所提出的方法有望用于最大限度地减少鸭笼生长过程中的人力资源,并使鸭笼成为智能农场。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Animal Science and Technology
Journal of Animal Science and Technology Agricultural and Biological Sciences-Food Science
CiteScore
4.50
自引率
8.70%
发文量
96
审稿时长
7 weeks
期刊介绍: Journal of Animal Science and Technology (J. Anim. Sci. Technol. or JAST) is a peer-reviewed, open access journal publishing original research, review articles and notes in all fields of animal science. Topics covered by the journal include: genetics and breeding, physiology, nutrition of monogastric animals, nutrition of ruminants, animal products (milk, meat, eggs and their by-products) and their processing, grasslands and roughages, livestock environment, animal biotechnology, animal behavior and welfare. Articles generally report research involving beef cattle, dairy cattle, pigs, companion animals, goats, horses, and sheep. However, studies involving other farm animals, aquatic and wildlife species, and laboratory animal species that address fundamental questions related to livestock and companion animal biology will also be considered for publication. The Journal of Animal Science and Technology (J. Anim. Technol. or JAST) has been the official journal of The Korean Society of Animal Science and Technology (KSAST) since 2000, formerly known as The Korean Journal of Animal Sciences (launched in 1956).
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