Deep learning has significantly improved the precision of instance segmentation with abundant labeled data. However, in many areas like medical and manufacturing, collecting sufficient data is extremely hard and labeling this data requires high professional skills. We follow this motivation and propose a new task set named zero-shot instance segmentation (ZSI). In the training phase of ZSI, the model is trained with seen data, while in the testing phase, it is used to segment all seen and unseen instances. We first formulate the ZSI task and propose a method to tackle the challenge, which consists of Zero-shot Detector, Semantic Mask Head, Background Aware RPN and Synchronized Background Strategy. We present a new benchmark for zero-shot instance segmentation based on the MS-COCO dataset. The extensive empirical results in this benchmark show that our method not only surpasses the state-of-the-art results in zero-shot object detection task but also achieves promising performance on ZSI. Our approach will serve as a solid baseline and facilitate future research in zero-shot instance segmentation.
翻译:深入的学习大大提高了用大量标签数据对实例进行分解的精确度,然而,在医疗和制造等许多领域,收集足够的数据极为困难,需要高专业技能。我们遵循这一动机,并提出一个新的任务集,名为零光实例分解(ZSI)。在ZSI的培训阶段,模型用可见数据进行训练,而在测试阶段,模型用于分解所有可见和不可见的事例。我们首先制定ZSI任务,并提议一种方法来应对挑战,其中包括零弹探测器、Semistic Mask Head、背景认识RPN和同步背景战略。我们提出了以MS-CO数据集为基础的零光实例分解新基准。这一基准的广泛经验结果表明,我们的方法不仅超过了零光天化物体探测任务的最新结果,而且还取得了ZSI的有希望的绩效。我们的方法将作为可靠的基准,并将促进今后零光谱分解的研究。