Company News
Component Biologically Inspired Features with Moving Segmentation for Age Estimation
|
Gee-Sern Jison Hsu ; Yi-Tseng Cheng ; Choon Ching Ng ; Moi Hoon Yap
2017 IEEE Conference on Computer Vision and Pattern Recognition Workshops (CVPRW), 2017.07
We propose the Component Bio-Inspired Feature (CBIF) with a moving segmentation scheme for age estimation. The CBIF defines a superset for the commonly used Bio-Inspired Feature (BIF) with more parameters and flexibility in settings, resulting in features with abundant characteristics. An in-depth study is performed for the determination of the parameters good for capturing age-related traits. The moving segmentation is proposed to better determine the age boundaries good for age grouping, and improve the overall performance. The proposed approach is evaluated on two common benchmarks, FG-NET and MORPH databases, and compared with contemporary approaches to demonstrate its efficacy.
Related Posts
Panasonic R&D Center Singapore Takes Second Place at the Second Edition of the AI Driving Olympics
Panasonic R&D Center Singapore finished second among the top 5 teams that made the cut from among the 50 teams in a leading international competition – that is, the second edition of the AI Driving Olympics, where Panasonic R&D Center Singapore is last year’s champion.
Read morePanasonic R&D Center Singapore’s Technology – LVNet for Photo Management – Incorporated into Panasonic’s New DIGA Models to Be Commercially Launched in Japan
New models of Panasonic’s Blu-ray recorder DIGA will be launched in Japan on 16th October 2020. (Model Name: DMR-4T401・4CT401 /…
Read morePanasonic R&D Center Singapore ranked in 3rd place in the NIST FRVT 1:1 Verification
In the latest Performance Summary of the NIST* FRVT** 1:1 Verification [last updated: 24th January 2022], Panasonic R&D Center Singapore’s…
Read morePaper accepted for publication in the IEEE Transactions on Systems, Man, and Cybernetics: Systems
Collaborating with Nanjing University of Science and Technology (NUST), Panasonic R&D Center Singapore co-authored a paper titled “Modular Lightweight Network…
Read more
