Transferring Rich Deep Features for Facial Beauty Prediction

03/20/2018
by   Lu Xu, et al.
0

Feature extraction plays a significant part in computer vision tasks. In this paper, we propose a method which transfers rich deep features from a pretrained model on face verification task and feeds the features into Bayesian ridge regression algorithm for facial beauty prediction. We leverage the deep neural networks that extracts more abstract features from stacked layers. Through simple but effective feature fusion strategy, our method achieves improved or comparable performance on SCUT-FBP dataset and ECCV HotOrNot dataset. Our experiments demonstrate the effectiveness of the proposed method and clarify the inner interpretability of facial beauty perception.

READ FULL TEXT

page 3

page 4

page 5

research
07/12/2012

ROI Segmentation for Feature Extraction from Human Facial Images

Human Computer Interaction (HCI) is the biggest goal of computer vision ...
research
09/18/2017

A Hierarchical Probabilistic Model for Facial Feature Detection

Facial feature detection from facial images has attracted great attentio...
research
05/24/2020

Recognizing Families through Images with Pretrained Encoder

Kinship verification and kinship retrieval are emerging tasks in compute...
research
11/01/2020

FusiformNet: Extracting Discriminative Facial Features on Different Levels

Over the last several years, research on facial recognition based on Dee...
research
07/08/2022

Towards Intrinsic Common Discriminative Features Learning for Face Forgery Detection using Adversarial Learning

Existing face forgery detection methods usually treat face forgery detec...
research
12/28/2021

Skin feature point tracking using deep feature encodings

Facial feature tracking is a key component of imaging ballistocardiograp...
research
03/21/2023

An Embarrassingly Simple Approach for Wafer Feature Extraction and Defect Pattern Recognition

Identifying defect patterns in a wafer map during manufacturing is cruci...

Please sign up or login with your details

Forgot password? Click here to reset