Vision-Based Intelligent Robot Grasping Using Sparse Neural Network
Priya Shukla, Vandana Kushwaha, G C Nandi

TL;DR
This paper introduces two lightweight neural networks, Sparse-GRConvNet and Sparse-GINNet, that leverage sparsity and the Edge-PopUp algorithm to generate high-quality grasp poses in real-time, significantly reducing model size while outperforming state-of-the-art methods.
Contribution
The paper presents novel sparse neural network models for robotic grasping that maintain high accuracy with substantially reduced weights, enabling real-time manipulation of unfamiliar objects.
Findings
Both models outperform current state-of-the-art methods.
Achieve high accuracy with significantly less model weight.
Validated on real robotic hardware.
Abstract
In the modern era of Deep Learning, network parameters play a vital role in models efficiency but it has its own limitations like extensive computations and memory requirements, which may not be suitable for real time intelligent robot grasping tasks. Current research focuses on how the model efficiency can be maintained by introducing sparsity but without compromising accuracy of the model in the robot grasping domain. More specifically, in this research two light-weighted neural networks have been introduced, namely Sparse-GRConvNet and Sparse-GINNet, which leverage sparsity in the robotic grasping domain for grasp pose generation by integrating the Edge-PopUp algorithm. This algorithm facilitates the identification of the top K% of edges by considering their respective score values. Both the Sparse-GRConvNet and Sparse-GINNet models are designed to generate high-quality grasp poses…
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Taxonomy
TopicsRobot Manipulation and Learning · EEG and Brain-Computer Interfaces · Advanced Neural Network Applications
