Instance segmentation is the problem of detecting and delineating each distinct object of interest appearing in an image. Current instance segmentation approaches consist of ensembles of modules that are trained independently of each other, thus missing opportunities for joint learning. Here we propose a new instance segmentation paradigm consisting in an end-to-end method that learns how to segment instances sequentially. The model is based on a recurrent neural network that sequentially finds objects and their segmentations one at a time. This net is provided with a spatial memory that keeps track of what pixels have been explained and allows occlusion handling. In order to train the model we designed a principled loss function that accurately represents the properties of the instance segmentation problem. In the experiments carried out, we found that our method outperforms recent approaches on multiple person segmentation, and all state of the art approaches on the Plant Phenotyping dataset for leaf counting.
翻译:例分解是发现和分解在图像中出现的每个不同对象的问题。 现例分解方法包括将相互独立培训的模块组合在一起, 从而缺少共同学习的机会。 我们在这里提出一个新的例分解模式, 包括一个端到端方法, 学习如何按顺序分解事件。 模型基于一个经常性的神经网络, 该网络一次按顺序查找物体及其分解。 这个网络提供空间内存, 记录像素的解释, 并允许分解处理 。 为了训练我们设计的一个原则性损失函数, 准确代表实例分解问题的性质 。 在所进行的实验中, 我们发现我们的方法超越了最近关于多人分解的方法, 以及用于计叶子的植物基因组数据集的所有艺术方法 。