TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/Age Group and Gender Estimation in the Wild with Deep RoR ...

Age Group and Gender Estimation in the Wild with Deep RoR Architecture

Ke Zhang, Ce Gao, Liru Guo, Miao Sun, Xingfang Yuan, Tony X. Han, Zhenbing Zhao, Baogang Li

2017-10-09Gender ClassificationAge and Gender EstimationAge And Gender Classification
PaperPDF

Abstract

Automatically predicting age group and gender from face images acquired in unconstrained conditions is an important and challenging task in many real-world applications. Nevertheless, the conventional methods with manually-designed features on in-the-wild benchmarks are unsatisfactory because of incompetency to tackle large variations in unconstrained images. This difficulty is alleviated to some degree through Convolutional Neural Networks (CNN) for its powerful feature representation. In this paper, we propose a new CNN based method for age group and gender estimation leveraging Residual Networks of Residual Networks (RoR), which exhibits better optimization ability for age group and gender classification than other CNN architectures.Moreover, two modest mechanisms based on observation of the characteristics of age group are presented to further improve the performance of age estimation.In order to further improve the performance and alleviate over-fitting problem, RoR model is pre-trained on ImageNet firstly, and then it is fune-tuned on the IMDB-WIKI-101 data set for further learning the features of face images, finally, it is used to fine-tune on Adience data set. Our experiments illustrate the effectiveness of RoR method for age and gender estimation in the wild, where it achieves better performance than other CNN methods. Finally, the RoR-152+IMDB-WIKI-101 with two mechanisms achieves new state-of-the-art results on Adience benchmark.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingAdience AgeAccuracy (5-fold)66.74RoR-34 + IMDB-WIKI
Face ReconstructionAdience AgeAccuracy (5-fold)66.74RoR-34 + IMDB-WIKI
3DAdience AgeAccuracy (5-fold)66.74RoR-34 + IMDB-WIKI
3D Face ModellingAdience AgeAccuracy (5-fold)66.74RoR-34 + IMDB-WIKI
3D Face ReconstructionAdience AgeAccuracy (5-fold)66.74RoR-34 + IMDB-WIKI
Age And Gender ClassificationAdience AgeAccuracy (5-fold)66.74RoR-34 + IMDB-WIKI

Related Papers

Some Optimizers are More Equal: Understanding the Role of Optimizers in Group Fairness2025-04-21Who Are You Behind the Screen? Implicit MBTI and Gender Detection Using Artificial Intelligence2025-03-12TransECG: Leveraging Transformers for Explainable ECG Re-identification Risk Analysis2025-03-11YARE-GAN: Yet Another Resting State EEG-GAN2025-03-04Demographic Attributes Prediction from Speech Using WavLM Embeddings2025-02-17VANPY: Voice Analysis Framework2025-02-17Graph Contrastive Learning for Connectome Classification2025-02-07Streaming Speaker Change Detection and Gender Classification for Transducer-Based Multi-Talker Speech Translation2025-02-04