LAD-RCNN:A Powerful Tool for Livestock Face Detection and Normalization
Ling Sun, Guiqiong Liu, Xunping Jiang, Junrui Liu, Xu Wang, Han Yang,, Shiping Yang

TL;DR
This paper introduces LAD-RCNN, a fast and accurate livestock face detection and normalization method that detects face location and orientation in a single step, improving livestock face recognition systems.
Contribution
The study presents LAD-RCNN, a lightweight one-stage network with a novel rotation angle coding method for simultaneous face detection and orientation estimation in livestock images.
Findings
Achieved over 95% AP in livestock face detection.
Rotation angle deviation less than 6.48 degrees.
Frame rate of 72.74 FPS on a single GPU.
Abstract
With the demand for standardized large-scale livestock farming and the development of artificial intelligence technology, a lot of research in area of animal face recognition were carried on pigs, cattle, sheep and other livestock. Face recognition consists of three sub-task: face detection, face normalizing and face identification. Most of animal face recognition study focuses on face detection and face identification. Animals are often uncooperative when taking photos, so the collected animal face images are often in arbitrary directions. The use of non-standard images may significantly reduce the performance of face recognition system. However, there is no study on normalizing of the animal face image with arbitrary directions. In this study, we developed a light-weight angle detection and region-based convolutional network (LAD-RCNN) containing a new rotation angle coding method…
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Taxonomy
TopicsFood Supply Chain Traceability
MethodsTest
