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InEdit-Bench: Benchmarking Intermediate Logical Pathways for Intelligent Image Editing Models

arXiv:2603.03657v1h-index: 8
Originality Synthesis-oriented
AI Analysis

This addresses the need for more intelligent image editing models by providing a standardized benchmark to measure and improve dynamic reasoning capabilities, though it is incremental as it focuses on evaluation rather than a new method.

The authors tackled the problem that multimodal generative models lack dynamic reasoning for complex image editing tasks, and introduced InEdit-Bench, a benchmark that reveals significant shortcomings in 14 models across four task categories.

Multimodal generative models have made significant strides in image editing, demonstrating impressive performance on a variety of static tasks. However, their proficiency typically does not extend to complex scenarios requiring dynamic reasoning, leaving them ill-equipped to model the coherent, intermediate logical pathways that constitute a multi-step evolution from an initial state to a final one. This capacity is crucial for unlocking a deeper level of procedural and causal understanding in visual manipulation. To systematically measure this critical limitation, we introduce InEdit-Bench, the first evaluation benchmark dedicated to reasoning over intermediate pathways in image editing. InEdit-Bench comprises meticulously annotated test cases covering four fundamental task categories: state transition, dynamic process, temporal sequence, and scientific simulation. Additionally, to enable fine-grained evaluation, we propose a set of assessment criteria to evaluate the logical coherence and visual naturalness of the generated pathways, as well as the model's fidelity to specified path constraints. Our comprehensive evaluation of 14 representative image editing models on InEdit-Bench reveals significant and widespread shortcomings in this domain. By providing a standardized and challenging benchmark, we aim for InEdit-Bench to catalyze research and steer development towards more dynamic, reason-aware, and intelligent multimodal generative models.

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