Age Estimation Using Soft Labelling Ordinal Classification Approaches

Hits: 820
Research areas:
  • Uncategorized
Year:
2024
Type of Publication:
In Proceedings
Keywords:
Age estimation, soft labelling, ordinal classification
Authors:
Volume:
14640
Book title:
Advances in Artificial Intelligence
Pages:
40-49
Organization:
CAEPIA
Month:
Junio
ISSN:
1611-3349
BibTex:
Abstract:
This work explores the use of diverse soft labelling approaches recently proposed in the literature to address four distinct problems in age estimation. This kind of challenge can be considered an ordinal classification problem in machine learning or deep learning areas, as it exhibits a natural order among categories, reflecting the underlying age ranges defining each category. Soft labelling represents a machine learning approach in which, instead of assigning a single label to each instance in the dataset, a probability distribution across a range of labels is allocated. Soft labelling approaches prove particularly effective for age estimation due to the inherent uncertainty and continuity in age progression, which makes accurate age estimation from physical appearance difficult. Unlike categorical labels, age is a continuous variable that evolves over time. Thus, unlike hard labelling, soft labelling more effectively acknowledges the continuity and uncertainty inherent in age estimation. The experiments conducted in this study facilitate the comparison of soft labelling approaches against the nominal baseline. Results demonstrate superior performance of soft labelling approaches. Moreover, the statistical analysis reveals that use of a beta distribution to define soft labels yields the best results.
Back