Instance segmentation is a computer vision task where separate objects in an image are detected and segmented. State-of-the-art deep neural network models require large amounts of labeled data in order to perform well in this task. Making these annotations is time-consuming. We propose for the first time, an iterative learning and annotation method that is able to detect, segment and annotate instances in datasets composed of multiple similar objects. The approach requires minimal human intervention and needs only a bootstrapping set containing very few annotations. Experiments on two different datasets show the validity of the approach in different applications related to visual inspection.
翻译:光学分离是一种计算机的视觉任务,即探测和分离图像中的分离对象。最先进的深层神经网络模型需要大量的标签数据才能很好地完成这项任务。使这些注释耗费时间。我们首次提出一种迭代学习和注解方法,能够探测、分解和注解由多个类似对象组成的数据集中的事例。这种方法需要最低限度的人类干预,只需要一套装有极少说明的靴子。对两个不同的数据集的实验显示与视觉检查有关的不同应用方法的有效性。