杂乱场景中尺度平衡六自由度抓握检测方法研究

Haoxiang Ma, Di Huang
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引用次数: 2

摘要

本文针对六自由度抓握检测中存在尺度不平衡时的特征学习问题,提出了一种新的方法来解决小尺度样本处理的困难。提出了一种多尺度柱面分组(MsCG)模块,将多尺度柱面特征与全局上下文相结合,增强局部几何表示。它们分别缓解了在训练和推理中掌握尺度分布不均匀的影响。此外,为了方便训练,引入了noise -clean Mix (NcM)数据增强,旨在通过生成更多的数据,在实例级将它们混合成单个数据,以有效的方式弥合合成场景和原始场景之间的领域差距。在graspnet - 10亿基准上进行了大量的实验,在小规模案例上取得了显著的进步,取得了具有竞争力的结果。此外,真实世界抓取的性能突出了其泛化能力。我们的代码可在https://github.com/mahaoxiang822/Scale-Balanced-Grasp上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Scale Balanced 6-DoF Grasp Detection in Cluttered Scenes
In this paper, we focus on the problem of feature learning in the presence of scale imbalance for 6-DoF grasp detection and propose a novel approach to especially address the difficulty in dealing with small-scale samples. A Multi-scale Cylinder Grouping (MsCG) module is presented to enhance local geometry representation by combining multi-scale cylinder features and global context. Moreover, a Scale Balanced Learning (SBL) loss and an Object Balanced Sampling (OBS) strategy are designed, where SBL enlarges the gradients of the samples whose scales are in low frequency by apriori weights while OBS captures more points on small-scale objects with the help of an auxiliary segmentation network. They alleviate the influence of the uneven distribution of grasp scales in training and inference respectively. In addition, Noisy-clean Mix (NcM) data augmentation is introduced to facilitate training, aiming to bridge the domain gap between synthetic and raw scenes in an efficient way by generating more data which mix them into single ones at instance-level. Extensive experiments are conducted on the GraspNet-1Billion benchmark and competitive results are reached with significant gains on small-scale cases. Besides, the performance of real-world grasping highlights its generalization ability. Our code is available at https://github.com/mahaoxiang822/Scale-Balanced-Grasp.
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