4.5 Article

A CNN-based methodology for cow heat analysis from endoscopic images

Journal

APPLIED INTELLIGENCE
Volume 52, Issue 8, Pages 8372-8385

Publisher

SPRINGER
DOI: 10.1007/s10489-021-02910-5

Keywords

Deep learning; Endoscopic image; Android CNN optimization; Cow heat; Artificial insemination

Funding

  1. FEDER European program, JUNIA French Engineering school and G`enes Diffusion French company

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This paper presents a new vision system for cow heat detection based on the analysis of the cow's genital tract using a CNN model. Experimental results show that our CNN model achieves high accuracy, outperforming 19 methods in the state of the art. Furthermore, an optimized version of the model for Android deployment has been proposed, with a response time of a few seconds on a smart-phone.
In cattle farming, the artificial insemination technique is a biotechnology that brings to farmers a wide range of benefits namely health security, genetic gain and economic costs. The main condition for the success of artificial insemination within cattle is the heat (or estrus) detection. In this context, several cow heat detection systems have been recently proposed in the literature to assist the farmer in this task. Nevertheless, they are mainly based on the analysis of the physical behavior of the cow which may be affected by several factors related to its health and its environment. In this paper, we present a new vision system for cow heat detection which is based on the analysis of the genital tract of the cow. The main core of our system is a CNN model that has been designed and tailored for analyzing endoscopic images collected using an innovative insemination technology named Eye breed. The conducted experiments on two datasets namely our own dataset and a public dataset show the high accuracy of our CNN model (more than 97% for both datasets) outperforming 19 methods from the state of the art. Moreover, we propose an optimized version of our model for an Android deployment by exploiting several techniques namely quantization, GPU acceleration and video downsampling. The conducted tests on a smart-phone shows that our heat detection system has a response time of a few seconds.

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