R$^{2}$Seg: Training-Free OOD Medical Tumor Segmentation via Anatomical Reasoning and Statistical Rejection

Author 1 Author 2 Author 3
Department of Computer Science, University of XYZ

Abstract

The full article content could not be accessed from the provided link (https://arxiv.org/pdf/2511.12691.pdf). Therefore, a detailed summary outlining its purpose, specific methods, and conclusions cannot be accurately generated.

Keywords

R2Seg, Medical Tumor Segmentation, OOD, Training-Free, Anatomical Reasoning


1. Introduction

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2. Related Work

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3. Methodology

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4. Experimental Results

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5. Discussion

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