YONA: You Only Need One Adjacent Reference-frame for Accurate and Fast Video Polyp Detection
Yuncheng Jiang, Zixun Zhang, Ruimao Zhang, Guanbin Li, Shuguang Cui,, Zhen Li

TL;DR
YONA introduces a novel video polyp detection framework that relies on a single adjacent reference frame, improving accuracy and speed in challenging colonoscopy videos with camera jitters.
Contribution
YONA is the first end-to-end framework that detects polyps using only one adjacent frame, employing adaptive alignment and contrastive learning to handle jitters and complex backgrounds.
Findings
YONA outperforms state-of-the-art methods in accuracy.
YONA achieves faster detection speeds.
YONA demonstrates robustness in challenging benchmarks.
Abstract
Accurate polyp detection is essential for assisting clinical rectal cancer diagnoses. Colonoscopy videos contain richer information than still images, making them a valuable resource for deep learning methods. Great efforts have been made to conduct video polyp detection through multi-frame temporal/spatial aggregation. However, unlike common fixed-camera video, the camera-moving scene in colonoscopy videos can cause rapid video jitters, leading to unstable training for existing video detection models. Additionally, the concealed nature of some polyps and the complex background environment further hinder the performance of existing video detectors. In this paper, we propose the \textbf{YONA} (\textbf{Y}ou \textbf{O}nly \textbf{N}eed one \textbf{A}djacent Reference-frame) method, an efficient end-to-end training framework for video polyp detection. YONA fully exploits the information of…
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Taxonomy
TopicsColorectal Cancer Screening and Detection · Advanced Image and Video Retrieval Techniques · Medical Image Segmentation Techniques
MethodsContrastive Learning
