CVFeb 6, 2025

Enhanced Feature-based Image Stitching for Endoscopic Videos in Pediatric Eosinophilic Esophagitis

arXiv:2502.04207v2h-index: 15Medical Imaging
Originality Incremental advance
AI Analysis

This addresses the time-consuming and error-prone process of reviewing endoscopy videos for gastrointestinal disease diagnosis, though it is incremental as it builds on existing feature-based stitching with a novel preprocessing pipeline.

The paper tackled the problem of stitching endoscopic images from pediatric eosinophilic esophagitis videos, which is challenging due to smooth surfaces and lack of distinct features, and resulted in significantly improved image alignment and stitching quality compared to traditional methods, as demonstrated on 20 videos.

Video endoscopy represents a major advance in the investigation of gastrointestinal diseases. Reviewing endoscopy videos often involves frequent adjustments and reorientations to piece together a complete view, which can be both time-consuming and prone to errors. Image stitching techniques address this issue by providing a continuous and complete visualization of the examined area. However, endoscopic images, particularly those of the esophagus, present unique challenges. The smooth surface, lack of distinct feature points, and non-horizontal orientation complicate the stitching process, rendering traditional feature-based methods often ineffective for these types of images. In this paper, we propose a novel preprocessing pipeline designed to enhance endoscopic image stitching through advanced computational techniques. Our approach converts endoscopic video data into continuous 2D images by following four key steps: (1) keyframe selection, (2) image rotation adjustment to correct distortions, (3) surface unwrapping using polar coordinate transformation to generate a flat image, and (4) feature point matching enhanced by Adaptive Histogram Equalization for improved feature detection. We evaluate stitching quality through the assessment of valid feature point match pairs. Experiments conducted on 20 pediatric endoscopy videos demonstrate that our method significantly improves image alignment and stitching quality compared to traditional techniques, laying a robust foundation for more effective panoramic image creation.

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