Litcius/Paper detail

Joint Extraction of Retinal Vessels and Centerlines Based on Deep Semantics and Multi-Scaled Cross-Task Aggregation

Rui Xu, Tiantian Liu, Xinchen Ye, Fei Liu, Lin Lin, Liang Li, Satoshi Tanaka, Yen‐Wei Chen

2020IEEE Journal of Biomedical and Health Informatics22 citationsDOI

Abstract

Retinal vessel segmentation and centerline extraction are crucial steps in building a computer-aided diagnosis system on retinal images. Previous works treat them as two isolated tasks, while ignoring their tight association. In this paper, we propose a deep semantics and multi-scaled cross-task aggregation network that takes advantage of the association to jointly improve their performances. Our network is featured by two sub-networks. The forepart is a deep semantics aggregation sub-network that aggregates strong semantic information to produce more powerful features for both tasks, and the tail is a multi-scaled cross-task aggregation sub-network that explores complementary information to refine the results. We evaluate the proposed method on three public databases, which are DRIVE, STARE and CHASE_DB1. Experimental results show that our method can not only simultaneously extract retinal vessels and their centerlines but also achieve the state-of-the-art performances on both tasks.

Topics & Concepts

Computer scienceSemantics (computer science)Task (project management)SegmentationArtificial intelligenceAssociation (psychology)Joint (building)Computer visionPattern recognition (psychology)PhilosophyManagementProgramming languageArchitectural engineeringEconomicsEngineeringEpistemologyRetinal Imaging and AnalysisDigital Imaging for Blood DiseasesGlaucoma and retinal disorders