Visual Detection of Lost Ear Tags in Breeding Pigs in a Production Environment Using the Enhanced Cascade Mask R-CNN

Author:

Wang Fang1ORCID,Fu Xueliang1,Duan Weijun1ORCID,Wang Buyu1ORCID,Li Honghui1

Affiliation:

1. College of Computer Science, Inner Mongolia Agricultural University, Hohot 010018, China

Abstract

As the unique identifier of individual breeding pigs, the loss of ear tags can result in the loss of breeding pigs’ identity information, leading to data gaps and confusion in production and genetic breeding records, which can have catastrophic consequences for breeding efforts. Detecting the loss of ear tags in breeding pigs can be challenging in production environments due to factors such as overlapping breeding pig clusters, imbalanced pig-to-tag ratios, and relatively small-sized ear tags. This study proposes an improved method for the detection of lost ear tags in breeding pigs based on Cascade Mask R-CNN. Firstly, the model utilizes ResNeXt combined with a feature pyramid network (FPN) as the feature extractor; secondly, the classification branch incorporates the online hard example mining (OHEM) technique to improve the utilization of ear tags and low-confidence samples; finally, the regression branch employs a decay factor of Soft-NMS to reduce the overlap of redundant bounding boxes. The experiment employs a sliding window detection method to evaluate the algorithm’s performance in detecting lost ear tags in breeding pigs in a production environment. The results show that the accuracy of the detection can reach 92.86%. This improvement effectively enhances the accuracy and real-time performance of lost ear tag detection, which is highly significant for the production and breeding of breeding pigs.

Funder

Key Science and Technology Special Project of Inner Mongolia Autonomous Region

Special Project for Building a Science and Technology Innovation Team at Universities of Inner Mongolia Autonomous Region

National Natural Science Foundation of China

Research Innovation Foundation of Graduate Students of Inner Mongolia Autonomous Region

Publisher

MDPI AG

Subject

Plant Science,Agronomy and Crop Science,Food Science

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