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Clothes Grasping and Unfolding Based on RGB-D Semantic Segmentation

About

Clothes grasping and unfolding is a core step in robotic-assisted dressing. Most existing works leverage depth images of clothes to train a deep learning-based model to recognize suitable grasping points. These methods often utilize physics engines to synthesize depth images to reduce the cost of real labeled data collection. However, the natural domain gap between synthetic and real images often leads to poor performance of these methods on real data. Furthermore, these approaches often struggle in scenarios where grasping points are occluded by the clothing item itself. To address the above challenges, we propose a novel Bi-directional Fractal Cross Fusion Network (BiFCNet) for semantic segmentation, enabling recognition of graspable regions in order to provide more possibilities for grasping. Instead of using depth images only, we also utilize RGB images with rich color features as input to our network in which the Fractal Cross Fusion (FCF) module fuses RGB and depth data by considering global complex features based on fractal geometry. To reduce the cost of real data collection, we further propose a data augmentation method based on an adversarial strategy, in which the color and geometric transformations simultaneously process RGB and depth data while maintaining the label correspondence. Finally, we present a pipeline for clothes grasping and unfolding from the perspective of semantic segmentation, through the addition of a strategy for grasp point selection from segmentation regions based on clothing flatness measures, while taking into account the grasping direction. We evaluate our BiFCNet on the public dataset NYUDv2 and obtained comparable performance to current state-of-the-art models. We also deploy our model on a Baxter robot, running extensive grasping and unfolding experiments as part of our ablation studies, achieving an 84% success rate.

Xingyu Zhu, Xin Wang, Jonathan Freer, Hyung Jin Chang, Yixing Gao• 2023

Related benchmarks

TaskDatasetResultRank
Robotic Garment GraspingReal-world multi-illumination garment dataset
Success Rate60
20
Robotic GraspingNon-garment Objects Towels and Shopping Bags
mGSR52.4
12
Robotic GraspingRealData low-medium luminance 20-40 1.0
Grasping Success Rate7
5
Garment GraspingMIGG Luminance 80 – 120 1.0 (test)
Glove Grasp Count9
5
Garment GraspingMIGG Luminance 40 – 80 1.0 (test)
Success Rate (Glove)53.3333
5
Garment GraspingMIGG Luminance 0 – 40 1.0 (test)
Grasp Success Ratio (Glove)0.3333
5
Robotic GraspingRealData Lu low luminance 0-20 1.0
Grasping Success Rate0.3333
5
Robotic GraspingRealData medium-high luminance 40-60 1.0
Grasping Success Rate7
5
Robotic GraspingRealData high luminance 60-80 1.0
Grasping Success Rate0.6
5
Garment GraspingSimulation Luminance 0 - 20
Grasping Accuracy46.7
3
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