Wafer Map Defect Pattern Classification and Image Retrieval Using Convolutional Neural Network

Wafer maps provide important information for engineers in identifying root causes of die failures during semiconductor manufacturing processes. We present a method for wafer map defect pattern classification and image retrieval using convolutional neural networks (CNNs). Twenty eight thousand six hundred synthetic wafer maps for 22 defect classes are generated theoretically and used for CNN training, validation, and testing. The overall classification accuracy for the 6600 test dataset is 98.2%. One thousand one hundred and ninety one real wafer maps are used for CNN performance evaluation for the same model trained by synthetic wafer maps. We demonstrate that by using only synthetic data for network training, real wafer maps can be classified with high accuracy. For image retrieval, a binary code for each wafer map is generated from an output of a fully connected layer with sigmoid activation. A retrieval error rate is 0.36% for the test dataset and 3.7% for the real wafers. Image retrieval takes 0.13 s per wafer map from the 18 000 wafer map library.

[1]  Ming-Ju Wu,et al.  Wafer Map Failure Pattern Recognition and Similarity Ranking for Large-Scale Data Sets , 2015, IEEE Transactions on Semiconductor Manufacturing.

[2]  Shih-Fu Chang,et al.  Image Retrieval: Current Techniques, Promising Directions, and Open Issues , 1999, J. Vis. Commun. Image Represent..

[3]  Victor S. Lempitsky,et al.  Neural Codes for Image Retrieval , 2014, ECCV.

[4]  Geoffrey E. Hinton,et al.  ImageNet classification with deep convolutional neural networks , 2012, Commun. ACM.

[5]  Seong-Jun Kim,et al.  Automatic Identification of Defect Patterns in Semiconductor Wafer Maps Using Spatial Correlogram and Dynamic Time Warping , 2008, IEEE Transactions on Semiconductor Manufacturing.

[6]  Suk Joo Bae,et al.  Detection of Spatial Defect Patterns Generated in Semiconductor Fabrication Processes , 2011, IEEE Transactions on Semiconductor Manufacturing.

[7]  Marcel Worring,et al.  Content-Based Image Retrieval at the End of the Early Years , 2000, IEEE Trans. Pattern Anal. Mach. Intell..

[8]  Way Kuo,et al.  Model-based clustering for integrated circuit yield enhancement , 2007, Eur. J. Oper. Res..

[9]  Jen-Hao Hsiao,et al.  Deep learning of binary hash codes for fast image retrieval , 2015, 2015 IEEE Conference on Computer Vision and Pattern Recognition Workshops (CVPRW).