Deep-learning-based gestational sac detection in ultrasound images using modified YOLOv7-E6E model.

IF 2.7 3区 农林科学 Q1 AGRICULTURE, DAIRY & ANIMAL SCIENCE
Tae-Kyeong Kim, Jin Soo Kim, Hyun-Chong Cho
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引用次数: 1

Abstract

As the population and income levels rise, meat consumption steadily increases annually. However, the number of farms and farmers producing meat decrease during the same period, reducing meat sufficiency. Information and Communications Technology (ICT) has begun to be applied to reduce labor and production costs of livestock farms and improve productivity. This technology can be used for rapid pregnancy diagnosis of sows; the location and size of the gestation sacs of sows are directly related to the productivity of the farm. In this study, a system proposes to determine the number of gestation sacs of sows from ultrasound images. The system used the YOLOv7-E6E model, changing the activation function from sigmoid-weighted linear unit (SiLU) to a multi-activation function (SiLU + Mish). Also, the upsampling method was modified from nearest to bicubic to improve performance. The model trained with the original model using the original data achieved mean average precision of 86.3%. When the proposed multi-activation function, upsampling, and AutoAugment were applied, the performance improved by 0.3%, 0.9%, and 0.9%, respectively. When all three proposed methods were simultaneously applied, a significant performance improvement of 3.5% to 89.8% was achieved.

Abstract Image

Abstract Image

Abstract Image

基于深度学习的超声图像妊娠囊检测改进YOLOv7-E6E模型。
随着人口和收入水平的提高,肉类消费逐年稳步增长。然而,在同一时期,生产肉类的农场和农民的数量减少,减少了肉类的充足性。信息通信技术(ICT)已开始应用于降低畜牧场的劳动力和生产成本,提高生产力。该技术可用于母猪妊娠快速诊断;母猪妊娠囊的位置和大小直接关系到农场的生产力。在这项研究中,提出了一个系统,以确定从超声图像母猪妊娠囊的数量。该系统采用YOLOv7-E6E模型,将激活函数从sigmoid加权线性单元(SiLU)改为多重激活函数(SiLU + Mish)。同时,对上采样方法进行了改进,从最接近采样到双三次采样,提高了性能。使用原始数据与原始模型训练后的模型平均精度达到86.3%。当应用所提出的多激活函数、上采样和AutoAugment时,性能分别提高了0.3%、0.9%和0.9%。当所有三种方法同时应用时,实现了3.5%至89.8%的显着性能改进。
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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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