NeuVolEx: Implicit Neural Features for Volume Exploration
Haill An, Suhyeon Kim, Donghyuk Choo, Younhyun Jung

TL;DR
NeuVolEx introduces a novel neural volume exploration method that leverages implicit neural representations and multi-task learning to enhance ROI classification and viewpoint recommendation in volume exploration.
Contribution
It extends implicit neural representations beyond compression, using learned features with structural encoding for improved volume exploration tasks.
Findings
NeuVolEx achieves accurate ROI classification with limited supervision.
Supports unsupervised clustering for diverse viewpoint identification.
Improves effectiveness and usability over prior methods.
Abstract
Direct volume rendering (DVR) aims to help users identify and examine regions of interest (ROIs) within volumetric data, and feature representations that support effective ROI classification and clustering play a fundamental role in volume exploration. Existing approaches typically rely on either explicit local feature representations or implicit convolutional feature representations learned from raw volumes. However, explicit local feature representations are limited in capturing broader geometric patterns and spatial correlations, while implicit convolutional feature representations do not necessarily ensure robust performance in practice, where user supervision is typically limited. Meanwhile, implicit neural representations (INRs) have recently shown strong promise in DVR for volume compression, owing to their ability to compactly parameterize continuous volumetric fields. In this…
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