Local Intensity Order Transformation for Robust Curvilinear Object Segmentation
Tianyi Shi, Nicolas Boutry, Yongchao Xu, Thierry G\'eraud

TL;DR
This paper introduces a novel local intensity order transformation (LIOT) that enhances the robustness and generalizability of curvilinear structure segmentation across different datasets and applications.
Contribution
The paper proposes LIOT, a contrast-invariant representation that captures inherent curvilinear features, improving cross-dataset segmentation performance.
Findings
LIOT improves segmentation accuracy across multiple datasets.
LIOT enhances generalizability between retinal and pavement crack images.
The method is robust to contrast variations and large appearance gaps.
Abstract
Segmentation of curvilinear structures is important in many applications, such as retinal blood vessel segmentation for early detection of vessel diseases and pavement crack segmentation for road condition evaluation and maintenance. Currently, deep learning-based methods have achieved impressive performance on these tasks. Yet, most of them mainly focus on finding powerful deep architectures but ignore capturing the inherent curvilinear structure feature (e.g., the curvilinear structure is darker than the context) for a more robust representation. In consequence, the performance usually drops a lot on cross-datasets, which poses great challenges in practice. In this paper, we aim to improve the generalizability by introducing a novel local intensity order transformation (LIOT). Specifically, we transfer a gray-scale image into a contrast-invariant four-channel image based on the…
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Taxonomy
TopicsRetinal Imaging and Analysis · Medical Image Segmentation Techniques · Retinal Diseases and Treatments
