Dense Semantic Forecasting in Video by Joint Regression of Features and Feature Motion

IEEE Trans Neural Netw Learn Syst. 2023 Sep;34(9):6443-6455. doi: 10.1109/TNNLS.2021.3136624. Epub 2023 Sep 1.

Abstract

Dense semantic forecasting anticipates future events in the video by inferring pixel-level semantics of an unobserved future image. We present a novel approach that is applicable to various single-frame architectures and tasks. Our approach consists of two modules. The feature-to-motion (F2M) module forecasts a dense deformation field that warps past features into their future positions. The feature-to-feature (F2F) module regresses the future features directly and is, therefore, able to account for emergent scenery. The compound F2MF model decouples the effects of motion from the effects of novelty in a task-agnostic manner. We aim to apply F2MF forecasting to the most subsampled and the most abstract representation of the desired single-frame model. Our design takes advantage of deformable convolutions and spatial correlation coefficients across neighboring time instants. We perform experiments on three dense prediction tasks: semantic segmentation, instance-level segmentation, and panoptic segmentation. The results reveal state-of-the-art forecasting accuracy across three dense prediction tasks.