Guoming Li, G. Chesser, J. Purswell, C. Magee, R. Gates, Y. Xiong
{"title":"Design and Development of a Broiler Mortality Removal Robot","authors":"Guoming Li, G. Chesser, J. Purswell, C. Magee, R. Gates, Y. Xiong","doi":"10.13031/aea.15013","DOIUrl":null,"url":null,"abstract":"Highlights A broiler mortality removal robot was successfully developed. The broiler shank was the target anatomical part for detection and mortality pickup. Higher light intensities improved the performance of detection and pickup performance. The final success rate for picking up dead birds was 90.0% at the 1000-lux light intensity. Abstract. Manual collection of broiler mortality is time-consuming, unpleasant, and laborious. The objectives of this research were: (1) to design and fabricate a broiler mortality removal robot from commercially available components to automatically collect dead birds; (2) to compare and evaluate deep learning models and image processing algorithms for detecting and locating dead birds; and (3) to examine detection and mortality pickup performance of the robot under different light intensities. The robot consisted of a two-finger gripper, a robot arm, a camera mounted on the robot’s arm, and a computer controller. The robot arm was mounted on a table, and 64 Ross 708 broilers between 7 and 14 days of age were used for the robot development and evaluation. The broiler shank was the target anatomical part for detection and mortality pickup. Deep learning models and image processing algorithms were embedded into the vision system and provided location and orientation of the shank of interest, so that the gripper could approach and position itself for precise pickup. Light intensities of 10, 20, 30, 40, 50, 60, 70, and 1000 lux were evaluated. Results indicated that the deep learning model “You Only Look Once (YOLO)” V4 was able to detect and locate shanks more accurately and efficiently than YOLO V3. Higher light intensities improved the performance of the deep learning model detection, image processing orientation identification, and final pickup performance. The final success rate for picking up dead birds was 90.0% at the 1000-lux light intensity. In conclusion, the developed system is a helpful tool towards automating broiler mortality removal from commercial housing, and contributes to further development of an integrated autonomous set of solutions to improve production and resource use efficiency in commercial broiler production, as well as to improve well-being of workers. Keywords: Automation, Broiler, Deep learning, Image processing, Mortality, Robot arm.","PeriodicalId":55501,"journal":{"name":"Applied Engineering in Agriculture","volume":"1 1","pages":""},"PeriodicalIF":0.8000,"publicationDate":"2022-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"2","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Applied Engineering in Agriculture","FirstCategoryId":"97","ListUrlMain":"https://doi.org/10.13031/aea.15013","RegionNum":4,"RegionCategory":"农林科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q4","JCRName":"AGRICULTURAL ENGINEERING","Score":null,"Total":0}
引用次数: 2
Abstract
Highlights A broiler mortality removal robot was successfully developed. The broiler shank was the target anatomical part for detection and mortality pickup. Higher light intensities improved the performance of detection and pickup performance. The final success rate for picking up dead birds was 90.0% at the 1000-lux light intensity. Abstract. Manual collection of broiler mortality is time-consuming, unpleasant, and laborious. The objectives of this research were: (1) to design and fabricate a broiler mortality removal robot from commercially available components to automatically collect dead birds; (2) to compare and evaluate deep learning models and image processing algorithms for detecting and locating dead birds; and (3) to examine detection and mortality pickup performance of the robot under different light intensities. The robot consisted of a two-finger gripper, a robot arm, a camera mounted on the robot’s arm, and a computer controller. The robot arm was mounted on a table, and 64 Ross 708 broilers between 7 and 14 days of age were used for the robot development and evaluation. The broiler shank was the target anatomical part for detection and mortality pickup. Deep learning models and image processing algorithms were embedded into the vision system and provided location and orientation of the shank of interest, so that the gripper could approach and position itself for precise pickup. Light intensities of 10, 20, 30, 40, 50, 60, 70, and 1000 lux were evaluated. Results indicated that the deep learning model “You Only Look Once (YOLO)” V4 was able to detect and locate shanks more accurately and efficiently than YOLO V3. Higher light intensities improved the performance of the deep learning model detection, image processing orientation identification, and final pickup performance. The final success rate for picking up dead birds was 90.0% at the 1000-lux light intensity. In conclusion, the developed system is a helpful tool towards automating broiler mortality removal from commercial housing, and contributes to further development of an integrated autonomous set of solutions to improve production and resource use efficiency in commercial broiler production, as well as to improve well-being of workers. Keywords: Automation, Broiler, Deep learning, Image processing, Mortality, Robot arm.
研制成功一种肉鸡死亡率去除机器人。肉鸡小腿是检测和死亡率采集的目标解剖部位。较高的光强度提高了检测和拾取性能。在1000勒克斯光强下,最终捡到死鸟的成功率为90.0%。摘要手工收集肉鸡死亡率是费时、不愉快和费力的。本研究的目的是:(1)利用市售部件设计制造肉鸡死亡清除机器人,实现对死鸟的自动收集;(2)比较和评价用于死鸟检测和定位的深度学习模型和图像处理算法;(3)考察机器人在不同光强下的检测和死亡率拾取性能。该机器人由一个两指夹持器、一个机械臂、安装在机械臂上的摄像头和一个计算机控制器组成。机械臂安装在工作台上,选用64只7 ~ 14日龄罗斯708肉鸡进行机器人研制和评价。肉鸡小腿是检测和死亡率采集的目标解剖部位。深度学习模型和图像处理算法嵌入到视觉系统中,并提供感兴趣的手柄的位置和方向,以便抓取器可以接近和定位自己以进行精确抓取。评估了10、20、30、40、50、60、70和1000勒克斯的光强度。结果表明,深度学习模型“You Only Look Once (YOLO)”V4能够比YOLO V3更准确、更有效地检测和定位小腿。更高的光强度提高了深度学习模型检测、图像处理方向识别和最终拾取性能的性能。在1000勒克斯光强下,最终捡到死鸟的成功率为90.0%。综上所述,所开发的系统是实现商品房肉鸡死亡率自动化去除的有用工具,有助于进一步开发一套集成的自主解决方案,以提高商品肉鸡生产和资源利用效率,并改善工人的福祉。关键词:自动化,肉鸡,深度学习,图像处理,死亡率,机械臂
期刊介绍:
This peer-reviewed journal publishes applications of engineering and technology research that address agricultural, food, and biological systems problems. Submissions must include results of practical experiences, tests, or trials presented in a manner and style that will allow easy adaptation by others; results of reviews or studies of installations or applications with substantially new or significant information not readily available in other refereed publications; or a description of successful methods of techniques of education, outreach, or technology transfer.