CVDec 29, 2025

NeXT-IMDL: Build Benchmark for NeXT-Generation Image Manipulation Detection & Localization

arXiv:2512.23374v1h-index: 22
Originality Synthesis-oriented
AI Analysis

This addresses the need for robust evaluation in image manipulation detection for security and forensics, though it is incremental as it focuses on benchmarking rather than new detection methods.

The paper tackled the problem of evaluating image manipulation detection and localization methods by proposing NeXT-IMDL, a large-scale diagnostic benchmark that reveals systemic failures and significant performance degradation in 11 representative models under rigorous cross-dimension protocols.

The accessibility surge and abuse risks of user-friendly image editing models have created an urgent need for generalizable, up-to-date methods for Image Manipulation Detection and Localization (IMDL). Current IMDL research typically uses cross-dataset evaluation, where models trained on one benchmark are tested on others. However, this simplified evaluation approach conceals the fragility of existing methods when handling diverse AI-generated content, leading to misleading impressions of progress. This paper challenges this illusion by proposing NeXT-IMDL, a large-scale diagnostic benchmark designed not just to collect data, but to probe the generalization boundaries of current detectors systematically. Specifically, NeXT-IMDL categorizes AIGC-based manipulations along four fundamental axes: editing models, manipulation types, content semantics, and forgery granularity. Built upon this, NeXT-IMDL implements five rigorous cross-dimension evaluation protocols. Our extensive experiments on 11 representative models reveal a critical insight: while these models perform well in their original settings, they exhibit systemic failures and significant performance degradation when evaluated under our designed protocols that simulate real-world, various generalization scenarios. By providing this diagnostic toolkit and the new findings, we aim to advance the development towards building truly robust, next-generation IMDL models.

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