TY - GEN
T1 - The use of historical defect imagery for yield learning
AU - Tobin, K. W.
AU - Karnowski, T. P.
AU - Lakhani, F.
N1 - Publisher Copyright:
© 2000 IEEE.
PY - 2000
Y1 - 2000
N2 - The rapid identification of yield detracting mechanisms through integrated yield management is the primary goal of defect sourcing and yield learning. At future technology nodes, yield learning must proceed at an accelerated rate to maintain current defect sourcing cycle times despite the growth in circuit complexity and the amount of data acquired on a given wafer lot. As integrated circuit fabrication processes increase in complexity, it has been determined that data collection, retention, and retrieval rates will continue to increase at an alarming rate. Oak Ridge National Laboratory (ORNL) has been working with International SEMATECH to develop methods for managing the large volumes of image data that are being generated to monitor the status of the manufacturing process. This data contains an historical record that can be used to assist the yield engineer in the rapid resolution of manufacturing problems. To date there are no efficient methods of sorting and analyzing the vast repositories of imagery collected by off-line review tools for failure analysis, particle monitoring, line width control and overlay metrology. In this paper we will describe a new method for organizing, searching, and retrieving imagery using a query image to extract images from a large image database based on visual similarity.
AB - The rapid identification of yield detracting mechanisms through integrated yield management is the primary goal of defect sourcing and yield learning. At future technology nodes, yield learning must proceed at an accelerated rate to maintain current defect sourcing cycle times despite the growth in circuit complexity and the amount of data acquired on a given wafer lot. As integrated circuit fabrication processes increase in complexity, it has been determined that data collection, retention, and retrieval rates will continue to increase at an alarming rate. Oak Ridge National Laboratory (ORNL) has been working with International SEMATECH to develop methods for managing the large volumes of image data that are being generated to monitor the status of the manufacturing process. This data contains an historical record that can be used to assist the yield engineer in the rapid resolution of manufacturing problems. To date there are no efficient methods of sorting and analyzing the vast repositories of imagery collected by off-line review tools for failure analysis, particle monitoring, line width control and overlay metrology. In this paper we will describe a new method for organizing, searching, and retrieving imagery using a query image to extract images from a large image database based on visual similarity.
KW - Acceleration
KW - Complexity theory
KW - Fabrication
KW - Failure analysis
KW - Information retrieval
KW - Integrated circuit technology
KW - Integrated circuit yield
KW - Laboratories
KW - Manufacturing processes
KW - Monitoring
UR - http://www.scopus.com/inward/record.url?scp=84949762443&partnerID=8YFLogxK
U2 - 10.1109/ASMC.2000.902553
DO - 10.1109/ASMC.2000.902553
M3 - Conference contribution
AN - SCOPUS:84949762443
T3 - ASMC (Advanced Semiconductor Manufacturing Conference) Proceedings
SP - 18
EP - 25
BT - 2000 IEEE/SEMI Advanced Semiconductor Manufacturing Conference and Workshop
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 11th IEEE/SEMI Advanced Semiconductor Manufacturing Conference and Workshop, ASMC 2000
Y2 - 12 September 2000 through 14 September 2000
ER -