利用空间编码进行三维形状分析的群组多视图变换器

IF 8.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Transactions on Multimedia Pub Date : 2024-04-29 DOI:10.1109/TMM.2024.3394731
Lixiang Xu;Qingzhe Cui;Richang Hong;Wei Xu;Enhong Chen;Xin Yuan;Chenglong Li;Yuanyan Tang
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引用次数: 0

摘要

近年来,基于视图的三维形状识别方法的成果已趋于饱和,性能优异的模型因参数数量庞大而无法在内存有限的设备上部署。为解决这一问题,我们在该领域引入了一种基于知识提炼的压缩方法,在尽可能保留模型性能的同时,大大减少了参数数量。具体来说,为了增强较小模型的能力,我们设计了一种高性能的大型模型,称为组多视图视觉转换器(GMViT)。在 GMViT 中,视图级 ViT 首先建立视图级特征之间的关系。此外,为了捕捉更深层次的特征,我们使用分组模块将视图级特征增强为组级特征。最后,组级 ViT 将组级特征聚合为完整、格式清晰的三维形状描述符。值得注意的是,在这两种 ViT 中,我们都引入了相机坐标的空间编码作为创新的位置嵌入。此外,我们还提出了基于 GMViT 的两个压缩版本,即 GMViT-简单版和 GMViT-迷你版。为了提高小型模型的训练效果,我们在整个 GMViT 过程中引入了一种知识提炼方法,将每个 GMViT 组件的关键输出作为提炼目标。大量实验证明了所提方法的有效性。大型模型 GMViT 在基准数据集 ModelNet、ShapeNetCore55 和 MCB 上取得了出色的三维分类和检索结果。较小的模型 GMViT-simple 和 GMViT-mini 分别将参数大小减少了 8 倍和 17.6 倍,形状识别速度平均提高了 1.5 倍,同时保留了至少 90% 的识别性能。
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Group Multi-View Transformer for 3D Shape Analysis With Spatial Encoding
In recent years, the results of view-based 3D shape recognition methods have saturated, and models with excellent performance cannot be deployed on memory-limited devices due to their huge size of parameters. To address this problem, we introduce a compression method based on knowledge distillation for this field, which largely reduces the number of parameters while preserving model performance as much as possible. Specifically, to enhance the capabilities of smaller models, we design a high-performing large model called Group Multi-view Vision Transformer (GMViT). In GMViT, the view-level ViT first establishes relationships between view-level features. Additionally, to capture deeper features, we employ the grouping module to enhance view-level features into group-level features. Finally, the group-level ViT aggregates group-level features into complete, well-formed 3D shape descriptors. Notably, in both ViTs, we introduce spatial encoding of camera coordinates as innovative position embeddings. Furthermore, we propose two compressed versions based on GMViT, namely GMViT-simple and GMViT-mini. To enhance the training effectiveness of the small models, we introduce a knowledge distillation method throughout the GMViT process, where the key outputs of each GMViT component serve as distillation targets. Extensive experiments demonstrate the efficacy of the proposed method. The large model GMViT achieves excellent 3D classification and retrieval results on the benchmark datasets ModelNet, ShapeNetCore55, and MCB. The smaller models, GMViT-simple and GMViT-mini, reduce the parameter size by 8 and 17.6 times, respectively, and improve shape recognition speed by 1.5 times on average, while preserving at least 90% of the recognition performance.
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来源期刊
IEEE Transactions on Multimedia
IEEE Transactions on Multimedia 工程技术-电信学
CiteScore
11.70
自引率
11.00%
发文量
576
审稿时长
5.5 months
期刊介绍: The IEEE Transactions on Multimedia delves into diverse aspects of multimedia technology and applications, covering circuits, networking, signal processing, systems, software, and systems integration. The scope aligns with the Fields of Interest of the sponsors, ensuring a comprehensive exploration of research in multimedia.
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