CloSE: A Compact Shape- and Orientation-Agnostic Cloth State Representation
- URL: http://arxiv.org/abs/2504.05033v1
- Date: Mon, 07 Apr 2025 12:54:58 GMT
- Title: CloSE: A Compact Shape- and Orientation-Agnostic Cloth State Representation
- Authors: Jay Kamat, Júlia Borràs, Carme Torras,
- Abstract summary: We present a new representation for the deformation-state of clothes.<n>The heat-map of the dGLI disk uncovers patterns that correspond to features of the cloth state.<n>This representation is compact, continuous, and general for different shapes.
- Score: 4.551160285910023
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Cloth manipulation is a difficult problem mainly because of the non-rigid nature of cloth, which makes a good representation of deformation essential. We present a new representation for the deformation-state of clothes. First, we propose the dGLI disk representation, based on topological indices computed for segments on the edges of the cloth mesh border that are arranged on a circular grid. The heat-map of the dGLI disk uncovers patterns that correspond to features of the cloth state that are consistent for different shapes, sizes of positions of the cloth, like the corners and the fold locations. We then abstract these important features from the dGLI disk onto a circle, calling it the Cloth StatE representation (CloSE). This representation is compact, continuous, and general for different shapes. Finally, we show the strengths of this representation in two relevant applications: semantic labeling and high- and low-level planning. The code, the dataset and the video can be accessed from : https://jaykamat99.github.io/close-representation
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