Parsing Netlists of Integrated Circuits from Images via Graph Attention Network
Sensors, ISSN: 1424-8220, Vol: 24, Issue: 1
2024
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Sensors, Vol. 24, Pages 227: Parsing Netlists of Integrated Circuits from Images via Graph Attention Network
Sensors, Vol. 24, Pages 227: Parsing Netlists of Integrated Circuits from Images via Graph Attention Network Sensors doi: 10.3390/s24010227 Authors: Wenxing Hu Xianke Zhan Minglei
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Reports Outline Sensor Research Study Results from Shanghai University of Electric Power (Parsing Netlists of Integrated Circuits from Images via Graph Attention Network)
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Article Description
A massive number of paper documents that include important information such as circuit schematics can be converted into digital documents by optical sensors like scanners or digital cameras. However, extracting the netlists of analog circuits from digital documents is an exceptionally challenging task. This process aids enterprises in digitizing paper-based circuit diagrams, enabling the reuse of analog circuit designs and the automatic generation of datasets required for intelligent design models in this domain. This paper introduces a bottom-up graph encoding model aimed at automatically parsing the circuit topology of analog integrated circuits from images. The model comprises an improved electronic component detection network based on the Swin Transformer, an algorithm for component port localization, and a graph encoding model. The objective of the detection network is to accurately identify component positions and types, followed by automatic dataset generation through port localization, and finally, utilizing the graph encoding model to predict potential connections between circuit components. To validate the model’s performance, we annotated an electronic component detection dataset and a circuit diagram dataset, comprising 1200 and 3552 training samples, respectively. Detailed experimentation results demonstrate the superiority of our proposed enhanced algorithm over comparative algorithms across custom and public datasets. Furthermore, our proposed port localization algorithm significantly accelerates the annotation speed of circuit diagram datasets.
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