Litcius/Paper detail

CompFeat: Comprehensive Feature Aggregation for Video Instance Segmentation

Yang Fu, Linjie Yang, Ding Liu, Thomas S. Huang, Humphrey Shi

2021Proceedings of the AAAI Conference on Artificial Intelligence49 citationsDOIOpen Access PDF

Abstract

Video instance segmentation is a complex task in which we need to detect, segment, and track each object for any given video. Previous approaches only utilize single-frame features for the detection, segmentation, and tracking of objects and they suffer in the video scenario due to several distinct challenges such as motion blur and drastic appearance change. To eliminate ambiguities introduced by only using single-frame features, we propose a novel comprehensive feature aggregation approach (CompFeat) to refine features atboth frame-level and object-level with temporal and spatial context information. The aggregation process is carefully designed with a new attention mechanism which significantly increases the discriminative power of the learned features. We further improve the tracking capability of our model through a siamese design by incorporating both feature similarities and spatial similarities. Experiments conducted on the YouTube-VIS dataset validate the effectiveness of proposed CompFeat.

Topics & Concepts

Computer scienceDiscriminative modelArtificial intelligenceSegmentationFeature (linguistics)Frame (networking)Computer visionVideo trackingContext (archaeology)Pattern recognition (psychology)Object (grammar)Process (computing)Task (project management)EngineeringGeographyPhilosophyOperating systemLinguisticsTelecommunicationsSystems engineeringArchaeologyVideo Analysis and SummarizationAdvanced Image and Video Retrieval TechniquesMultimodal Machine Learning Applications