Automatically grade the failure modes of the test result images with grading assistance. Optical inspection calculates the area of bulk material remaining as a percentage of the whole. The result and a picture with graphical overlay are stored in the system together with the measurement.
You do not need operator intervention to assist in grading the failure modes of test results. Using deep learning and a self learning library, we train a neural network in image processing. The system learns features which allow the classifier to distinguish between failures. By classifying the failure mode criterium beforehand, image recognition is ready to perform fully autograding without any assistance.
Operators do not need to fulfill assessments by accepting or editing the failure modes at the end of a fully automatic run. Deep learning automatically determines the type of pull or shear code based on given failures modes standards, for example, the JEDEC Standard 22-B116. Afterward, it automatically calculates the percentage of the remaining bond material in the region of interest and identifies the failure mode using classifications.
In exceptional cases, a slight intervention of an operator is necessary to classify the grading. Classification errors such as empty, very small, or too large pad(lift)s, gold areas, or bond areas, automatically show notifications for operator identification. You can easily classify and adjust these error messages on a remote workstation during or after the grading.
J.F. Kennedylaan 14b
5981 XC
Panningen
The Netherlands
Am Haupttor / Bürocenter
06237
Leuna
Germany
170 Commerce Way
Suite 200
Portsmouth, NH 03801
United States
72/7 M.12 Soi. Soonthornwipak
Bangpla, Bangphli,
10540 Samut Prakan
Thailand
No. 157, Zhongzheng
6th St., Hukou
Township, Hsinchu
County 303,
Taiwan (R.O.C.)
Room 2012
Haichuang Mansion,
No.288 Dengyun Road,
High-tech district, Kunshan,
Jiang Su, China
Xyztec develops world-class bond testing technologies and works together with global partners to provide local support worldwide.
J.F. Kennedylaan 14b
5981 XC
Panningen
The Netherlands
Tom Haley