The Institute
Achievements
Divisions
Contact Us
Address:
P. O. Box UP40,
Kumasi, Ghana
Telephone:
+233244190056 / +233244190037
+233244190038 / +233322060064
Fax:
+233-032-206-0080
Email:
brriadmin@csir.brri.org
We propose an age recognition method that compares a pair of image instances from the same gender for the three conditions of reflexivity, antisymmetry, and transitivity corresponding to older, similar, and younger than respectively. The approach uses a small number of reference set to address performance issues due to the lack of datasets for age recognition. Experimental results demonstrate that the use of a few optimally selected class references for the comparison resulted in a dramatic improvement on the baseline. Thus, with a Mean Absolute Error (MAE) of 4.07 and Cumulative score (CS) of 93.87% on the adience dataset, our proposal shows superiority among other gender-inspired age recognition proposals.
File Name: | CSIR-BRR for website Publications.docx |
File Size: | |
File Type: | application/msword |
Hits: | 635 Hits |
Created Date: | 05-31-2022 |
Last Updated Date: | 05-31-2022 |
Address:
P. O. Box UP40,
Kumasi, Ghana
Telephone:
+233244190056 / +233244190037
+233244190038 / +233322060064
Fax:
+233-032-206-0080
Email:
brriadmin@csir.brri.org