DenseXFormer:基于密度图的护理机器人有效遮挡人体实例分割网络

Sihao Qi, Jiexin Xie, Haitao Yan, Shijie Guo
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引用次数: 0

摘要

遮挡场景下的人体实例分割仍然是一项具有挑战性的任务,尤其是在护理场景中,这阻碍了护理机器人的发展。现有的方法无法将网络的注意力集中在闭塞区域,导致效果不理想。针对这一问题,本文提出了一种基于密度图的新型有效网络,用于实例分割任务。基于密度图的神经网络在人体相互遮挡的情况下表现良好,而且无需额外的注释信息即可进行训练。首先,引入密度图生成器(DMG),从骨干计算的特征图中生成精确的密度信息。其次,使用密度图可以增强密度融合模块(DFM)中的特征,从而使网络聚焦于高密度区域和闭塞区域。此外,为了弥补基于闭塞的护理实例分割数据集的不足,我们提出了一个新的数据集 NSR-数据集。在公共数据集(NSR 和 COCO-PersonOcc)上进行的大量实验表明,所提出的方法可以成为人体实例分割的有力工具。效率和准确性都有显著提高。数据集可从 https://github.com/Monkey0806/NSR-dataset 获取。
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DenseXFormer: An Effective Occluded Human Instance Segmentation Network based on Density Map for Nursing Robot
Human instance segmentation in occlusion scenarios remains a challenging task, especially in nursing scenarios, which hinders the development of nursing robots. Existing approaches are unable to focus the network’s attention on the occluded areas, which leads to unsatisfactory results. To address this issue, this paper proposes a novel and effective network based on density map in the instance segmentation task. Density map-based neural networks perform well in cases where human bodies occlude each other and can be trained without additional annotation information. Firstly, a density map generator (DMG) is introduced to generate accurate density information from feature maps computed by the backbone. Secondly, using density map enhances features in the density fusion module (DFM), which focuses the network on high-density areas as well as occluded areas. Additionally, to remedy the lack of occlusion-based dataset of nursing instance segmentation, a new dataset NSR-dataset is proposed. A large amount experiments on the public datasets (NSR and COCO-PersonOcc) show that the proposed method can be a powerful instrument for human instance segmentation. The improvements of efficiency with respect to accuracy are both prominent. The dataset can be got at https://github.com/Monkey0806/NSR-dataset.
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