Multi-Target Rumination Behavior Analysis Method of Cows Based on Target Detection and Optical Flow Algorithm

Author:

Gao Ronghua12,Liu Qihang123,Li Qifeng12,Ji Jiangtao3,Bai Qiang12,Zhao Kaixuan3,Yang Liuyiyi124

Affiliation:

1. Research Center of Information Technology, Beijing Academy of Agriculture and Forestry Sciences, Beijing 100097, China

2. National Engineering Research Center for Information Technology in Agriculture, Beijing 100097, China

3. College of Agricultural Equipment Engineering, Henan University of Science and Technology, Luoyang 471003, China

4. College of Computer and Information Engineering, Beijing University of Agriculture, Beijing 100096, China

Abstract

Rumination behavior is closely associated with factors such as cow productivity, reproductive performance, and disease incidence. For multi-object scenarios of dairy cattle, ruminant mouth area images accounted for little characteristic information, which was first put forward using an improved Faster R-CNN target detection algorithm to improve the detection performance model for the ruminant area of dairy cattle. The primary objective is to enhance the model’s performance in accurately detecting cow rumination regions. To achieve this, the dataset used in this study is annotated with both the cow head region and the mouth region. The ResNet-50-FPN network is employed to extract the cow mouth features, and the CBAM attention mechanism is incorporated to further improve the algorithm’s detection accuracy. Subsequently, the object detection results are combined with optical flow information to eliminate false detections. Finally, an interpolation approach is adopted to design a frame complementary algorithm that corrects the detection frame of the cow mouth region. This interpolation algorithm is employed to rectify the detection frame of the cow’s mouth region, addressing the issue of missed detections and enhancing the accuracy of ruminant mouth region detection. To overcome the challenges associated with the inaccurate extraction of small-scale optical flow information and interference between different optical flow information in multi-objective scenes, an enhanced GMFlowNet-based method for multi-objective cow ruminant optical flow analysis is proposed. To mitigate interference from other head movements, the MeanShift clustering method is utilized to compute the velocity magnitude values of each pixel in the vertical direction within the intercepted ruminant mouth region. Furthermore, the mean square difference is calculated, incorporating the concept of range interquartile, to eliminate outliers in the optical flow curve. Finally, a final filter is applied to fit the optical flow curve of the multi-object cow mouth movement, and it is able to identify rumination behavior and calculate chewing times. The efficacy, robustness, and accuracy of the proposed method are evaluated through experiments, with nine videos capturing multi-object cow chewing behavior in different settings. The experimental findings demonstrate that the enhanced Faster R-CNN algorithm achieved an 84.70% accuracy in detecting the ruminant mouth region, representing an improvement of 11.80 percentage points over the results obtained using the Faster R-CNN detection approach. Additionally, the enhanced GMFlowNet algorithm accurately identifies the ruminant behavior of all multi-objective cows, with a 97.30% accuracy in calculating the number of ruminant chewing instances, surpassing the accuracy of the FlowNet2.0 algorithm by 3.97 percentage points. This study provides technical support for intelligent monitoring and analysis of rumination behavior of dairy cows in group breeding.

Funder

Beijing Academy of Agricultural and Forestry Sciences Science and Technology Innovation Capacity Construction Project

National Natural Science Foundation of China

Publisher

MDPI AG

Subject

Management, Monitoring, Policy and Law,Renewable Energy, Sustainability and the Environment,Geography, Planning and Development,Building and Construction

Reference45 articles.

1. Development trends, challenges and policy recommendations of China’s dairy economy;Han;China J. Anim. Husb.,2019

2. Analysis of dairy farming patterns and their efficiency in China in the new era;Wei;China Herbiv. Sci.,2018

3. Research progress on intelligent animal information perception and behavior detection in precision animal husbandry;He;J. Agric. Mach.,2016

4. Current status and progress of research on individual information monitoring of dairy cows in precision farming;Liu;Heilongjiang Anim. Husb. Vet. Med.,2019

5. Research progress on the regulation mechanism of ruminant behavior in dairy cows;Wang;J. Anim. Nutr.,2021

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