CVJan 10, 2024

ECC-PolypDet: Enhanced CenterNet with Contrastive Learning for Automatic Polyp Detection

arXiv:2401.04961v113 citationsh-index: 8Has CodeIEEE journal of biomedical and health informatics
Originality Incremental advance
AI Analysis

This work addresses the challenge of detecting concealed and small polyps for early colorectal cancer diagnosis, representing an incremental improvement over existing detection methods.

The paper tackled the problem of automatic polyp detection in colonoscopy images by proposing ECC-PolypDet, a framework that uses contrastive learning and feature aggregation to improve accuracy, achieving superior performance on six large-scale datasets compared to previous state-of-the-art methods.

Accurate polyp detection is critical for early colorectal cancer diagnosis. Although remarkable progress has been achieved in recent years, the complex colon environment and concealed polyps with unclear boundaries still pose severe challenges in this area. Existing methods either involve computationally expensive context aggregation or lack prior modeling of polyps, resulting in poor performance in challenging cases. In this paper, we propose the Enhanced CenterNet with Contrastive Learning (ECC-PolypDet), a two-stage training \& end-to-end inference framework that leverages images and bounding box annotations to train a general model and fine-tune it based on the inference score to obtain a final robust model. Specifically, we conduct Box-assisted Contrastive Learning (BCL) during training to minimize the intra-class difference and maximize the inter-class difference between foreground polyps and backgrounds, enabling our model to capture concealed polyps. Moreover, to enhance the recognition of small polyps, we design the Semantic Flow-guided Feature Pyramid Network (SFFPN) to aggregate multi-scale features and the Heatmap Propagation (HP) module to boost the model's attention on polyp targets. In the fine-tuning stage, we introduce the IoU-guided Sample Re-weighting (ISR) mechanism to prioritize hard samples by adaptively adjusting the loss weight for each sample during fine-tuning. Extensive experiments on six large-scale colonoscopy datasets demonstrate the superiority of our model compared with previous state-of-the-art detectors.

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