1 / 1

Automated Counterfeit IC Physical Defect Characterization

Automated Counterfeit IC Physical Defect Characterization Team 176: Wesley Stevens, Dan Guerrera , Ryan Nesbit Advisors: Mohammad Tehranipoor , Domenic Forte ECE Department, University of Connecticut , { wesley.stevens , daniel.guerrera , ryan.nesbit }@ uconn.edu

alton
Télécharger la présentation

Automated Counterfeit IC Physical Defect Characterization

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Automated Counterfeit IC Physical Defect Characterization Team 176: Wesley Stevens, Dan Guerrera, Ryan Nesbit Advisors: Mohammad Tehranipoor, Domenic Forte ECE Department, University of Connecticut, {wesley.stevens, daniel.guerrera, ryan.nesbit}@uconn.edu {tehrani, forte}@engr.uconn.edu www.chase.uconn.edu Example Images Motivation Surface Analysis Pin Analysis • Increasing number of counterfeit integrated circuits (ICs) • Counterfeit ICs can cause catastrophic failure of systems • Current physical defect tests are destructive, time consuming • An expert is required both for performing tests and analysis of results Original Image: Original Image: Objective and Solution • Create an automated, user friendly program for identifying physical defects of ICs • Accept wide range of image inputs from various locations • Process different images with specific algorithms • Compile and display comprehensive results Transformation: Isolation of distinct objects: Approach and Methods • Counterfeit determination is based on identifying defects or abnormalities with the IC • Physical defects can be categorized by the component or location at which they occur • Imaging techniques provide data that can be used to identify defects and determine IC authenticity • Defects detected include: • Pin: dents, contamination, color variations, misaligned • Surface: scratches, color variation, improper textures, package damage • Text: markings, ghost markings • Scratch Analysis: • Converts image to binary using threshold • Creates line structuring elements for comparison • Iterates through operations while varying parameters • Statistical Averaging: • Divides image into blocks based on size • Calculates Global and Local statistics • Compares each block to gathered statistics • Flags blocks outside of threshold • Object Isolation: • Uses differences in intensity values to find objects • Different structuring elements are used to find • different objects • Algorithm iteratively grows these objects • The parameters of each structuring • element are changed on each iteration • Given the type of structuring element • the type of defect can be determined General Specifications Algorithm Results: Counting objects: Language: MATLAB Analysis Types: Single, Golden Image Types: Surface, Pin, Text Image Magnification: 20x – 100x Ideal Image Resolution: 1000 by 1000 pixels Output: Current Algorithm, Identified Defects, Summary Future Work • Expand Defect Coverage • Improve Algorithm Robustness • Expand Group Comparison Analysis • Create Graphical User Interface • Modify User Results Feature Matching and Alignment Difference: 0.1103 • Algorithm will count and find the • area of each object • This data is also used in determining • what type of defects might exist • Certain checks exist to help filter out false positives • Scratch Analysis: • Counts results of all operations • Highlights areas with count greater than a given threshold • Statistical Averaging: • Cleans up excess blocks • Determines types of anomalies present in different blocks • Correlate types to various defects About the Authors Wesley Stevens (EE/CE), Dan Guerrera (CE), and Ryan Nesbit (EE) are full time undergraduate students at the University of Connecticut.

More Related