Learning Robust Deep Face Representation

07/17/2015
by   Xiang Wu, et al.
0

With the development of convolution neural network, more and more researchers focus their attention on the advantage of CNN for face recognition task. In this paper, we propose a deep convolution network for learning a robust face representation. The deep convolution net is constructed by 4 convolution layers, 4 max pooling layers and 2 fully connected layers, which totally contains about 4M parameters. The Max-Feature-Map activation function is used instead of ReLU because the ReLU might lead to the loss of information due to the sparsity while the Max-Feature-Map can get the compact and discriminative feature vectors. The model is trained on CASIA-WebFace dataset and evaluated on LFW dataset. The result on LFW achieves 97.77 single net.

READ FULL TEXT
research
04/02/2018

Average Biased ReLU Based CNN Descriptor for Improved Face Retrieval

The convolutional neural networks (CNN) like AlexNet, GoogleNet, VGGNet,...
research
11/09/2015

A Light CNN for Deep Face Representation with Noisy Labels

Convolution neural network (CNN) has significantly pushed forward the de...
research
11/09/2017

Feed Forward and Backward Run in Deep Convolution Neural Network

Convolution Neural Networks (CNN), known as ConvNets are widely used in ...
research
06/07/2017

DeepSketch2Face: A Deep Learning Based Sketching System for 3D Face and Caricature Modeling

Face modeling has been paid much attention in the field of visual comput...
research
04/21/2022

An Efficient End-to-End Deep Neural Network for Interstitial Lung Disease Recognition and Classification

The automated Interstitial Lung Diseases (ILDs) classification technique...
research
10/13/2021

Clustering-Based Interpretation of Deep ReLU Network

Amongst others, the adoption of Rectified Linear Units (ReLUs) is regard...
research
11/24/2020

MicroNet: Towards Image Recognition with Extremely Low FLOPs

In this paper, we present MicroNet, which is an efficient convolutional ...

Please sign up or login with your details

Forgot password? Click here to reset