Litcius/Paper detail

Study on Poultry Pose Estimation Based on Multi-Parts Detection

Cheng Fang, Haikun Zheng, Jikang Yang, Hongfeng Deng, Tiemin Zhang

2022Animals28 citationsDOIOpen Access PDF

Abstract

Poultry pose estimation is a prerequisite for evaluating abnormal behavior and disease prediction in poultry. Accurate pose-estimation enables poultry producers to better manage their poultry. Because chickens are group-fed, how to achieve automatic poultry pose recognition has become a problematic point for accurate monitoring in large-scale farms. To this end, based on computer vision technology, this paper uses a deep neural network (DNN) technique to estimate the posture of a single broiler chicken. This method compared the pose detection results with the Single Shot MultiBox Detector (SSD) algorithm, You Only Look Once (YOLOV3) algorithm, RetinaNet algorithm, and Faster_R-CNN algorithm. Preliminary tests show that the method proposed in this paper achieves a 0.0128 standard deviation of precision and 0.9218 ± 0.0048 of confidence (95%) and a 0.0266 standard deviation of recall and 0.8996 ± 0.0099 of confidence (95%). By successfully estimating the pose of broiler chickens, it is possible to facilitate the detection of abnormal behavior of poultry. Furthermore, the method can be further improved to increase the overall success rate of verification.

Topics & Concepts

PoseComputer scienceArtificial intelligenceStandard deviationPattern recognition (psychology)DetectorEstimationPoultry farmingComputer visionStatisticsMathematicsEngineeringVeterinary medicineSystems engineeringMedicineTelecommunicationsAnimal Behavior and Welfare StudiesAnimal Nutrition and PhysiologySmart Agriculture and AI
Study on Poultry Pose Estimation Based on Multi-Parts Detection | Litcius