Panoptic segmentation combines the advantages of semantic and instance segmentation, which can provide both pixel-level and instance-level environmental perception information for intelligent vehicles. However, it is challenged with segmenting objects of various scales, especially on extremely large and small ones. In this work, we propose two lightweight modules to mitigate this problem. First, Pixel-relation Block is designed to model global context information for large-scale things, which is based on a query-independent formulation and brings small parameter increments. Then, Convectional Network is constructed to collect extra high-resolution information for small-scale stuff, supplying more appropriate semantic features for the downstream segmentation branches. Based on these two modules, we present an end-to-end Scale-aware Unified Network (SUNet), which is more adaptable to multi-scale objects. Extensive experiments on Cityscapes and COCO demonstrate the effectiveness of the proposed methods.
翻译:光学分离结合了语义和实例分割的优点,它可以为智能车辆提供像素级和试级的环境认知信息。然而,它受到各种规模的分解对象的挑战,特别是极大和小的分解对象。在这项工作中,我们提出了两个轻量模块来缓解这一问题。首先,像素关系区块的设计是为了模拟大型事物的全球背景信息,该区块以自问配方为基础,并带来小参数增量。然后,对流网络的建立是为了收集小型物品的额外高分辨率信息,为下游分解分支提供更合适的语义特征。基于这两个模块,我们提出了一个端到端的量度增强统一网络(SUNet),这个网络更适合多尺度物体。关于城市景点和COCO的广泛实验显示了拟议方法的有效性。