Recently, fully-convolutional one-stage networks have shown superior performance comparing to two-stage frameworks for instance segmentation as typically they can generate higher-quality mask predictions with less computation. In addition, their simple design opens up new opportunities for joint multi-task learning. In this paper, we demonstrate that adding a single classification layer for semantic segmentation, fully-convolutional instance segmentation networks can achieve state-of-the-art panoptic segmentation quality. This is made possible by our novel dynamic rank-1 convolution (DR1Conv), a novel dynamic module that can efficiently merge high-level context information with low-level detailed features which is beneficial for both semantic and instance segmentation. Importantly, the proposed new method, termed DR1Mask, can perform panoptic segmentation by adding a single layer. To our knowledge, DR1Mask is the first panoptic segmentation framework that exploits a shared feature map for both instance and semantic segmentation by considering both efficacy and efficiency. Not only our framework is much more efficient -- twice as fast as previous best two-branch approaches, but also the unified framework opens up opportunities for using the same context module to improve the performance for both tasks. As a byproduct, when performing instance segmentation alone, DR1Mask is 10% faster and 1 point in mAP more accurate than previous state-of-the-art instance segmentation network BlendMask. Code is available at: https://git.io/AdelaiDet
翻译:最近,完全进化的一阶段网络表现出了优异的性能,与两阶段框架相比,比如分化,它们通常可以产生质量更高的掩码预测,而计算较少。此外,它们的简单设计为联合多任务学习开辟了新的机会。在本文中,我们证明为语义分解添加一个单一分类层,完全进化的全进化式全进式分解网络可以达到全进式全进式全景分解质量。这是由我们的新颖的动态一级级同流(DR1Conv)(DR1Conv)所实现的。这是一个新的动态模块,可以有效地将高层次背景信息与低层次的详细特征结合起来,这对语义和实例分解都有好处。重要的是,拟议的新方法(DR1Mask)能够通过添加一个单一的分解层来进行全局分解。DR1Mask是第一个通过既考虑效果又效率来利用共同特征图的全局分解的全局化框架。不仅我们的框架效率高得多 -- 比前两个分局方法快一倍,而且统一框架也可以在B级分解模式上, 将一个分局的分局的分算法系统打开打开打开打开格式打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开打开, 。一个分局。一个分路路路路路路路路路路路路路路路路路路路路路路路段路段路。