Parallax to Align Them All: An OmniParallax Attention Mechanism for Distributed Multi-View Image Compression

The paper proposes ParaHydra, a novel distributed multi-view image compression framework featuring an OmniParallax Attention Mechanism and a Parallax Multi Information Fusion Module that adaptively aligns and integrates inter-view correlations, enabling it to significantly outperform state-of-the-art multi-view codecs in both bitrate efficiency and computational speed.

Haotian Zhang, Feiyue Long, Yixin Yu + 7 more2026-03-05💻 cs

Field imaging framework for morphological characterization of aggregates with computer vision: Algorithms and applications

This dissertation presents a comprehensive field imaging framework that leverages advanced computer vision algorithms, including 2D instance segmentation and an integrated 3D reconstruction-segmentation-completion approach, to overcome the limitations of traditional methods and enable accurate morphological characterization of construction aggregates across diverse field scenarios.

Haohang Huang2026-03-05🤖 cs.AI

MPFlow: Multi-modal Posterior-Guided Flow Matching for Zero-Shot MRI Reconstruction

MPFlow is a zero-shot multi-modal MRI reconstruction framework that leverages a self-supervised pretraining strategy (PAMRI) to guide rectified flow sampling with auxiliary structural scans, thereby significantly reducing hallucinations and improving anatomical fidelity compared to single-modality baselines while requiring fewer sampling steps.

Seunghoi Kim, Chen Jin, Henry F. J. Tregidgo + 2 more2026-03-05🤖 cs.AI

Order Is Not Layout: Order-to-Space Bias in Image Generation

This paper identifies and quantifies "Order-to-Space Bias" (OTS), a systematic flaw in modern image generation models where the textual order of entities incorrectly dictates their spatial layout, and demonstrates that this data-driven issue can be effectively mitigated through targeted fine-tuning and early-stage interventions without compromising generation quality.

Yongkang Zhang, Zonglin Zhao, Yuechen Zhang + 3 more2026-03-05🤖 cs.AI

QD-PCQA: Quality-Aware Domain Adaptation for Point Cloud Quality Assessment

To address the generalization challenges in No-Reference Point Cloud Quality Assessment caused by data scarcity, this paper proposes QD-PCQA, a novel unsupervised domain adaptation framework that transfers quality priors from images to point clouds through a Rank-weighted Conditional Alignment strategy and a Quality-guided Feature Augmentation module to enhance perceptual quality ranking and feature alignment.

Guohua Zhang, Jian Jin, Meiqin Liu + 2 more2026-03-05💻 cs