论文标题
猪的全景实例分割
Panoptic Instance Segmentation on Pigs
论文作者
论文摘要
如果使用自动识别系统,可以大大简化猪的行为研究。尤其是基于计算机视觉的系统的优势是它们允许评估而不会影响动物的正常行为。近年来,已经引入了基于深度学习的方法,并显示出令人愉悦的良好结果。特别是对象和关键点检测器已用于检测单个动物。尽管效果良好,但边界框和稀疏的关键点并未追踪动物的轮廓,从而导致大量信息丢失。因此,这项工作遵循了综合分割的相对较新的定义,并针对单个猪的像素精确分割。为此,提出了用于语义分割的神经网络的框架,介绍了不同的网络头和后处理方法。随着结果的实例分割掩盖了进一步的信息,例如动物的大小或重量。该方法在具有1000个手工标记图像的特殊创建的数据集上进行了测试,尽管遮挡和脏镜头等干扰,但仍达到95%(F1得分)的检测率。
The behavioural research of pigs can be greatly simplified if automatic recognition systems are used. Especially systems based on computer vision have the advantage that they allow an evaluation without affecting the normal behaviour of the animals. In recent years, methods based on deep learning have been introduced and have shown pleasingly good results. Especially object and keypoint detectors have been used to detect the individual animals. Despite good results, bounding boxes and sparse keypoints do not trace the contours of the animals, resulting in a lot of information being lost. Therefore this work follows the relatively new definition of a panoptic segmentation and aims at the pixel accurate segmentation of the individual pigs. For this a framework of a neural network for semantic segmentation, different network heads and postprocessing methods is presented. With the resulting instance segmentation masks further information like the size or weight of the animals could be estimated. The method is tested on a specially created data set with 1000 hand-labeled images and achieves detection rates of around 95% (F1 Score) despite disturbances such as occlusions and dirty lenses.