2024
DOI: 10.1017/s0263574724001929
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A refined robotic grasp detection network based on coarse-to-fine feature and residual attention

Zhenwei Zhu,
Saike Huang,
Jialong Xie
et al.

Abstract: Precise and efficient grasping detection is vital for robotic arms to execute stable grasping tasks in industrial and household applications. However, existing methods fail to consider refining different scale features and detecting critical regions, resulting in coarse grasping rectangles. To address these issues, we propose a real-time coarse and fine granularity residual attention (CFRA) grasping detection network. First, to enable the network to detect different sizes of objects, we extract and fuse the co… Show more

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