CVNov 30, 2023

A Survey on Deep Learning for Polyp Segmentation: Techniques, Challenges and Future Trends

arXiv:2311.18373v359 citationsh-index: 12Has Code
Originality Synthesis-oriented
AI Analysis

It addresses the problem of early colorectal cancer detection for clinicians by summarizing existing methods, but it is incremental as a survey without new experimental results.

This paper provides a comprehensive review of deep learning algorithms for polyp segmentation in medical images, detailing techniques, benchmark datasets, and evaluating recent models based on polyp sizes and network structures.

Early detection and assessment of polyps play a crucial role in the prevention and treatment of colorectal cancer (CRC). Polyp segmentation provides an effective solution to assist clinicians in accurately locating and segmenting polyp regions. In the past, people often relied on manually extracted lower-level features such as color, texture, and shape, which often had issues capturing global context and lacked robustness to complex scenarios. With the advent of deep learning, more and more outstanding medical image segmentation algorithms based on deep learning networks have emerged, making significant progress in this field. This paper provides a comprehensive review of polyp segmentation algorithms. We first review some traditional algorithms based on manually extracted features and deep segmentation algorithms, then detail benchmark datasets related to the topic. Specifically, we carry out a comprehensive evaluation of recent deep learning models and results based on polyp sizes, considering the pain points of research topics and differences in network structures. Finally, we discuss the challenges of polyp segmentation and future trends in this field. The models, benchmark datasets, and source code links we collected are all published at https://github.com/taozh2017/Awesome-Polyp-Segmentation.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes