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 that can detect the rotation angle and the location of animal face in one-stage. LAD-RCNN has a frame rate of 72.74 FPS (including all steps) on a single GeForce RTX 2080 Ti GPU. LAD-RCNN has been evaluated on multiple dataset including goat dataset and gaot infrared image. Evaluation result show that the AP of face detection was more than 95% and the deviation between the detected rotation angle and the ground-truth rotation angle were less than 0.036 (i.e. 6.48{\deg}) on all the test dataset. This shows that LAD-RCNN has excellent performance on livestock face and its direction detection, and therefore it is very suitable for livestock face detection and Normalizing. Code is available at https://github.com/SheepBreedingLab-HZAU/LAD-RCNN/
翻译:由于需要标准化的大规模畜牧业耕作和开发人工智能技术,对猪、牛、羊和其他牲畜进行了大量动物脸部识别研究,对动物脸部识别领域进行了大量研究。脸部识别包括三个子任务:面部检测、面部正常化和面部识别。动物脸部识别研究大多侧重于面部检测和面部识别。动物拍照时往往不合作,因此收集的动物脸部图像往往带有任意性倾向。使用非标准图像可能大大降低面部识别系统的性能。然而,没有研究动物脸部图像以任意方向实现正常化的问题。在这项研究中,我们开发了一个轻度角度检测和基于区域的混凝土网络(LAD-RCNNNN),其中包含一种新的旋转角度编码方法,可以检测到动物脸部的旋转角度和位置。LAD-RC在单一的面部 RTX 2080 Ti GPU.LAD-RC 和GOORRR 之间,其现有面部检测和SHRNRRR 测试结果显示的准确度值为95,在地面上,其表面检测结果显示在正常位置上显示的值为95。