Optimizing Drug Delivery in Smart Pharmacies: A Novel Framework of Multi-Stage Grasping Network Combined with Adaptive Robotics Mechanism
Rui Tang, Shirong Guo, Yuhang Qiu, Honghui Chen, Lujin, Huang, Ming Yong, Linfu Zhou, Liquan Guo

TL;DR
This paper introduces a comprehensive framework combining advanced neural networks, segmentation, and trajectory planning to improve robotic drug handling in smart pharmacies, addressing shape variability and overlapping issues.
Contribution
It presents a novel multi-stage grasping network with adaptive mechanisms and an integrated trajectory planning algorithm for enhanced robotic drug delivery.
Findings
Improved grasping accuracy in complex environments
Enhanced efficiency with time-optimal trajectory planning
Validated system adaptability in real-world settings
Abstract
Robots-based smart pharmacies are essential for modern healthcare systems, enabling efficient drug delivery. However, a critical challenge exists in the robotic handling of drugs with varying shapes and overlapping positions, which previous studies have not adequately addressed. To enhance the robotic arm's ability to grasp chaotic, overlapping, and variously shaped drugs, this paper proposed a novel framework combining a multi-stage grasping network with an adaptive robotics mechanism. The framework first preprocessed images using an improved Super-Resolution Convolutional Neural Network (SRCNN) algorithm, and then employed the proposed YOLOv5+E-A-SPPFCSPC+BIFPNC (YOLO-EASB) instance segmentation algorithm for precise drug segmentation. The most suitable drugs for grasping can be determined by assessing the completeness of the segmentation masks. Then, these segmented drugs were…
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Taxonomy
TopicsComputational Drug Discovery Methods
