학술논문

Polarity Detection of Welded Chip Based on Active Learning
Document Type
Conference
Source
2022 International Conference on High Performance Big Data and Intelligent Systems (HDIS) High Performance Big Data and Intelligent Systems (HDIS), 2022 International Conference on. :105-109 Dec, 2022
Subject
Components, Circuits, Devices and Systems
Computing and Processing
General Topics for Engineers
Robotics and Control Systems
Signal Processing and Analysis
Deep learning
Training
Welding
Neural networks
Manuals
Optical computing
Optical imaging
deep neural network
active learning
chip welding polarity defect
post-processing mechanism
Language
Abstract
Traditional polarity detection of welded chip mainly adopts Automated Optical Inspection (AOI) detection, and the chip with opposite polarity is manually rechecked. AOI detection speed is fast, but the false detection rate and missed detection rate are high, and the amount of manual rechecked data is very large. To this end, this paper builds a deep neural network integrating attention mechanism and feature fusion module. Based on the data set provided by enterprise, an active learning algorithm based on the query strategy of truth degree (the confidence of the unlabeled data set detection category and the positioning judgment correct) and falsity degree (the confidence of the unlabeled data set detection category or the positioning judgment wrong) is designed to constantly update the training set, train and optimize the deep neural network. A post-processing mechanism considering the position relationship between the polarity mark of chip and the polarity mark of PCB board is designed to achieve the high-quality detection of polarity defects of chip welding and greatly reduce the workload of manual reinspection. The model was tested on the test set, and the recall rate was 100 % , the accuracy rate was 90.7 % , and the processing time of single image was 5ms.