激光:神经辐射场的高效语言引导分割

Xingyu Miao;Haoran Duan;Yang Bai;Tejal Shah;Jun Song;Yang Long;Rajiv Ranjan;Ling Shao
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引用次数: 0

摘要

在这项工作中,我们提出了一种利用CLIP特征蒸馏的方法,通过语言引导实现高效的3D分割。与以往依赖于多尺度CLIP特征并受处理速度和存储要求限制的方法不同,我们的方法旨在通过直接有效地提取密集的CLIP特征来简化工作流程,从而实现使用文本对3D场景的精确分割。为了实现这一目标,我们引入了一个适配器模块,并通过自交叉训练策略减轻了密集CLIP特征蒸馏过程中的噪声问题。此外,为了提高分割边缘的准确性,本文提出了一种低秩瞬态查询关注机制。为了保证不同视点下相似颜色分割的一致性,我们通过标签体积将分割任务转化为分类任务,显著提高了颜色相似区域分割的一致性。我们还提出了一种简化的文本增强策略,以缓解CLIP特征与文本之间对应的模糊性问题。大量的实验结果表明,我们的方法在训练速度和性能上都超过了目前最先进的技术。
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Laser: Efficient Language-Guided Segmentation in Neural Radiance Fields
In this work, we propose a method that leverages CLIP feature distillation, achieving efficient 3D segmentation through language guidance. Unlike previous methods that rely on multi-scale CLIP features and are limited by processing speed and storage requirements, our approach aims to streamline the workflow by directly and effectively distilling dense CLIP features, thereby achieving precise segmentation of 3D scenes using text. To achieve this, we introduce an adapter module and mitigate the noise issue in the dense CLIP feature distillation process through a self-cross-training strategy. Moreover, to enhance the accuracy of segmentation edges, this work presents a low-rank transient query attention mechanism. To ensure the consistency of segmentation for similar colors under different viewpoints, we convert the segmentation task into a classification task through label volume, which significantly improves the consistency of segmentation in color-similar areas. We also propose a simplified text augmentation strategy to alleviate the issue of ambiguity in the correspondence between CLIP features and text. Extensive experimental results show that our method surpasses current state-of-the-art technologies in both training speed and performance.
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