Challenge: Existing methods to fix non-compliant images suffer from over-editing, destroying original intent and perceptual similarity.
Approach: They propose a framework for the minimalist rectification of non-compliant image ads.
Outcome: The proposed framework outperforms state-of-the-art baselines in both compliance and preservation of visual and commercial consistency.

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ℛ3: Advertisement Compliance ℛectification via Group-ℛelative Experience Extractor and Curriculum ℛeinforcement (2026.acl-industry)

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Challenge: Existing methods of content moderation are infeasible due to over-editing and compromise the advertiser’s original semantic intent.
Approach: They propose a framework to harmonize compliance with original intent preservation that integrates a data-driven framework and a curriculum to enforce compliance while maximizing semantic consistency.
Outcome: The proposed framework outperforms state-of-the-art baselines on industrial datasets and on online A/B testing on industrial video.
RAVEN: Robust Advertisement Video Violation Temporal Grounding via Reinforcement Reasoning (2025.acl-industry)

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Challenge: Existing methods for detecting ads video violations lack precise temporal grounding, noisy annotations, and limited generalization.
Approach: They propose a framework that integrates curriculum reinforcement learning with large language models to enhance reasoning and cognitive capabilities for violation detection.
Outcome: The proposed framework achieves superior performance in violation category accuracy and temporal interval localization.
RAVEN++: Pinpointing Fine-Grained Violations in Advertisement Videos with Active Reinforcement Reasoning (2025.emnlp-industry)

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Challenge: Recent advances in large language models have improved the detection of non-compliant content, but critical gaps persist in fine-grained understanding, explainability, and generalization.
Approach: They propose a framework that combines active reinforcement learning, fine-grained violation understanding and progressive multi-stage training.
Outcome: The proposed framework outperforms general-purpose LLMs and specialized models in fine-grained violation understanding, explainability, and generalization.
FineCops-Ref: A new Dataset and Task for Fine-Grained Compositional Referring Expression Comprehension (2024.emnlp-main)

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Challenge: Referring Expression Comprehension (REC) is a cross-modal task that objectively evaluates the capabilities of language understanding, image comprehension, and language-to-image grounding.
Approach: They propose to use a new reference expression comprehension (REC) dataset to evaluate the capabilities of language understanding, image comprehension, and language-to-image grounding.
Outcome: The proposed model is able to reject scenarios where the target object is not visible in the image, a key aspect often overlooked in existing models and approaches.
From Competition to Synergy: Unlocking Reinforcement Learning for Subject-Driven Image Generation (2026.acl-long)

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Challenge: a naive application of GRPO leads to conflicting gradient signals and a misalignment with the temporal dynamics of the diffusion process.
Approach: They propose a framework that uses synergy-aware reward shaping to penalize conflicted reward signals and amplify synergies to provide a sharper and decisive gradient.
Outcome: The proposed framework outperforms naive GRPO and Time-Aware Dynamic Weighting (TDW) on DreamBench, and achieves a state-of-the-art balance between ID preservation and prompt adherence.
Beyond the Safety Tax: Mitigating Unsafe Text-to-Image Generation via External Safety Rectification (2026.findings-acl)

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Challenge: Existing safety defenses typically intervene internally within the generative model, but suffer from severe concept entanglement, leading to degradation of benign generation quality.
Approach: They propose a structurally isolated safety module that performs external, interpretable rectification without modifying the base model.
Outcome: The proposed module performs external, interpretable rectification without modifying the base model.
From Pixels to Policies: Reinforcing Spatial Reasoning in Language Models for Content-Aware Layout Design (2026.acl-industry)

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Challenge: LaySPA equips large language models (LLMs) with explicit and interpretable spatial reasoning for content-aware graphic layout design.
Approach: They propose a reinforcement learning framework that equips large language models (LLMs) with explicit spatial reasoning for content-aware graphic layout design.
Outcome: Experiments show that LaySPA outperforms larger LLMs in structural validity and visual quality while requiring fewer annotated samples.
\mathsf{Con Instruction}: Universal Jailbreaking of Multimodal Large Language Models via Non-Textual Modalities (2025.acl-long)

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Challenge: Existing attacks communicate instruction through text, accompanied by a toxic image or audio . a novel gray-box attack method generates adversarial images or audio to convey harmful instructions to MLLMs .
Approach: They propose a gray-box attack method that generates adversarial images or audio to convey specific harmful instructions to MLLMs by following non-textual instruction.
Outcome: The proposed method achieves highest success rates on visual and audio-language models . larger models are more susceptible toCon Instruction, compared to their underlying models - the results will be released .
KnowDR-REC: Auditing Knowledge-Conditioned Visual Grounding in Referring Expression Comprehension (2026.findings-acl)

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Challenge: Existing evaluation metrics suggest that Multimodal large language models have acquired fine-grained visual grounding capabilities.
Approach: They propose a benchmark to assess Referring Expression Comprehension (REC) that uses intra-image visual cues to localize target objects and a controllable evaluation mechanism to test sensitivity to fine-grained factual changes.
Outcome: The proposed benchmarks show that multimodal large language models have a high level of performance on the RefCOCO family of benchmarks.
Curr-ReFT: Overcoming Training Bottlenecks in Small-scale Vision-Language Models via Curriculum Reinforcement Finetuning (2025.findings-emnlp)

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Challenge: State-of-the-art vision-language models require massive scaling that limits practical deployment.
Approach: They propose to use supervised fine-tuning to train small-scale vision-language models but face out-of-domain collapse when trained with traditional supervised learning (SFT).
Outcome: Experiments show that curr-reFT achieves state-of-the-art performance across visual tasks in both in- and out-of domain settings and benchmarks.

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