Multimodal feature fusion for CNN-based gait recognition: an empirical comparison

06/19/2018
by   Francisco Manuel Castro, et al.
0

People identification in video based on the way they walk (i.e. gait) is a relevant task in computer vision using a non-invasive approach. Standard and current approaches typically derive gait signatures from sequences of binary energy maps of subjects extracted from images, but this process introduces a large amount of non-stationary noise, thus, conditioning their efficacy. In contrast, in this paper we focus on the raw pixels, or simple functions derived from them, letting advanced learning techniques to extract relevant features. Therefore, we present a comparative study of different Convolutional Neural Network (CNN) architectures on three low-level features (i.e. gray pixels, optical flow channels and depth maps) on two widely-adopted and challenging datasets: TUM-GAID and CASIA-B. In addition, we perform a comparative study between different early and late fusion methods used to combine the information obtained from each kind of low-level features. Our experimental results suggest that (i) the use of hand-crafted energy maps (e.g. GEI) is not necessary, since equal or better results can be achieved from the raw pixels; (ii) the combination of multiple modalities (i.e. gray pixels, optical flow and depth maps) from different CNNs allows to obtain state-of-the-art results on the gait task with an image resolution several times smaller than the previously reported results; and, (iii) the selection of the architecture is a critical point that can make the difference between state-of-the-art results or poor results.

READ FULL TEXT
research
03/03/2016

Automatic learning of gait signatures for people identification

This work targets people identification in video based on the way they w...
research
07/27/2016

CNN-based Patch Matching for Optical Flow with Thresholded Hinge Embedding Loss

Learning based approaches have not yet achieved their full potential in ...
research
10/17/2017

Pose-based Deep Gait Recognition

Human gait or walking manner is a biometric feature that allows identifi...
research
09/23/2018

Unsupervised Learning of Dense Optical Flow and Depth from Sparse Event Data

In this work we present unsupervised learning of depth and motion from s...
research
06/13/2019

Hallucinating Bag-of-Words and Fisher Vector IDT terms for CNN-based Action Recognition

In this paper, we revive the use of old-fashioned handcrafted video repr...
research
11/13/2015

Deep Mean Maps

The use of distributions and high-level features from deep architecture ...
research
05/19/2014

ESSP: An Efficient Approach to Minimizing Dense and Nonsubmodular Energy Functions

Many recent advances in computer vision have demonstrated the impressive...

Please sign up or login with your details

Forgot password? Click here to reset