论文标题
关注综合段的联合预测与差异的关注
Joint Forecasting of Panoptic Segmentations with Difference Attention
论文作者
论文摘要
预测代表对于安全有效的自主权很重要。为此,已将全景分段作为最近工作中的引人注目的表示。但是,最新的有关泛滥分割预测的最新预测遇到了两个问题:首先,单个对象实例彼此独立处理;其次,单个对象实例预测以启发式方式合并。为了解决这两个问题,我们研究了一个新的全面分割预测模型,该模型使用基于“差异注意力”的变压器模型共同预测场景中的所有对象实例。它通过考虑深度估计来进一步完善预测。我们在城市景观和AIODRIVE数据集上评估了建议的模型。我们发现差异的关注特别适合预测,因为诸如位置之类的数量的差异使模型可以明确理由有关速度和加速度的理由。因此,我们获得了全面分割预测指标的最新。
Forecasting of a representation is important for safe and effective autonomy. For this, panoptic segmentations have been studied as a compelling representation in recent work. However, recent state-of-the-art on panoptic segmentation forecasting suffers from two issues: first, individual object instances are treated independently of each other; second, individual object instance forecasts are merged in a heuristic manner. To address both issues, we study a new panoptic segmentation forecasting model that jointly forecasts all object instances in a scene using a transformer model based on 'difference attention.' It further refines the predictions by taking depth estimates into account. We evaluate the proposed model on the Cityscapes and AIODrive datasets. We find difference attention to be particularly suitable for forecasting because the difference of quantities like locations enables a model to explicitly reason about velocities and acceleration. Because of this, we attain state-of-the-art on panoptic segmentation forecasting metrics.