PanoPlane achieves up to 17.8% PSNR gains in sparse-view indoor novel view synthesis by using training-free plane-aware panoramic completion to supervise 3D Gaussian Splatting.
Dual-channel attention guidance for training- free image editing control in diffusion transformers
4 Pith papers cite this work. Polarity classification is still indexing.
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Edit Fidelity Field reduces edit spillover in scene text editing from 94% to 25% by constructing a four-zone semantics-aware fidelity field from OCR detections.
PhysEdit introduces adaptive reasoning depth and spatial masking to make image editing faster and more instruction-aligned without retraining the base model.
AttnRouter routes edits to optimal attention operations per category on MMDiT, raising the CLIP-T+DINO-I composite score 6.4% above baseline while an automatic classifier recovers 98% of the gain.
citing papers explorer
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PanoPlane: Plane-Aware Panoramic Completion for Sparse-View Indoor 3D Gaussian Splatting
PanoPlane achieves up to 17.8% PSNR gains in sparse-view indoor novel view synthesis by using training-free plane-aware panoramic completion to supervise 3D Gaussian Splatting.
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Edit Fidelity Field: Semantics-Aware Region Isolation for Training-Free Scene Text Editing
Edit Fidelity Field reduces edit spillover in scene text editing from 94% to 25% by constructing a four-zone semantics-aware fidelity field from OCR detections.
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PhysEdit: Physically-Consistent Region-Aware Image Editing via Adaptive Spatio-Temporal Reasoning
PhysEdit introduces adaptive reasoning depth and spatial masking to make image editing faster and more instruction-aligned without retraining the base model.
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AttnRouter: Per-Category Attention Routing for Training-Free Image Editing on MMDiT
AttnRouter routes edits to optimal attention operations per category on MMDiT, raising the CLIP-T+DINO-I composite score 6.4% above baseline while an automatic classifier recovers 98% of the gain.