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Ying Xue

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AAAI Conference 2024 Conference Paper

X4D-SceneFormer: Enhanced Scene Understanding on 4D Point Cloud Videos through Cross-Modal Knowledge Transfer

  • Linglin Jing
  • Ying Xue
  • Xu Yan
  • Chaoda Zheng
  • Dong Wang
  • Ruimao Zhang
  • Zhigang Wang
  • Hui Fang

The field of 4D point cloud understanding is rapidly developing with the goal of analyzing dynamic 3D point cloud sequences. However, it remains a challenging task due to the sparsity and lack of texture in point clouds. Moreover, the irregularity of point cloud poses a difficulty in aligning temporal information within video sequences. To address these issues, we propose a novel cross-modal knowledge transfer framework, called X4D-SceneFormer. This framework enhances 4D-Scene understanding by transferring texture priors from RGB sequences using a Transformer architecture with temporal relationship mining. Specifically, the framework is designed with a dual-branch architecture, consisting of an 4D point cloud transformer and a Gradient-aware Image Transformer (GIT). The GIT combines visual texture and temporal correlation features to offer rich semantics and dynamics for better point cloud representation. During training, we employ multiple knowledge transfer techniques, including temporal consistency losses and masked self-attention, to strengthen the knowledge transfer between modalities. This leads to enhanced performance during inference using single-modal 4D point cloud inputs. Extensive experiments demonstrate the superior performance of our framework on various 4D point cloud video understanding tasks, including action recognition, action segmentation and semantic segmentation. The results achieve 1st places, i.e., 85.3% (+7.9%) accuracy and 47.3% (+5.0%) mIoU for 4D action segmentation and semantic segmentation, on the HOI4D challenge, outperforming previous state-of-the-art by a large margin. We release the code at https://github.com/jinglinglingling/X4D.

ICRA Conference 1994 Conference Paper

Dextrous Sliding Manipulating Using Soft Fingertips

  • Ying Xue
  • Imin Kao

In this paper, we build upon the results of the previous sliding manipulation analysis (Kao-Cutkosky 1992, 1993) developed for instantaneously dexterous motion analysis, and extend the results to finite motion analysis and trajectory planning for soft robotic fingertips. Using the method of sliding analysis with decomposed rigid-body (RB) and non-rigid-body (NRB) components, we find the trajectory and motions of the finger tips over a finite range of motions during which the RB and NRB components are updated continuously. The results show that: (i) the RB/NRB sliding analysis can be applied to finite motion planning, (ii) the relative magnitudes of RB/NRB motions can be used as an index for manipulation task, and (iii) the advantageous orientations of force/motion can be used to plan for the motions of the grasped object. >