A Spatiotemporal Oriented Energy Network for Dynamic Texture Recognition

08/22/2017
by   Isma Hadji, et al.
0

This paper presents a novel hierarchical spatiotemporal orientation representation for spacetime image analysis. It is designed to combine the benefits of the multilayer architecture of ConvNets and a more controlled approach to spacetime analysis. A distinguishing aspect of the approach is that unlike most contemporary convolutional networks no learning is involved; rather, all design decisions are specified analytically with theoretical motivations. This approach makes it possible to understand what information is being extracted at each stage and layer of processing as well as to minimize heuristic choices in design. Another key aspect of the network is its recurrent nature, whereby the output of each layer of processing feeds back to the input. To keep the network size manageable across layers, a novel cross-channel feature pooling is proposed. The multilayer architecture that results systematically reveals hierarchical image structure in terms of multiscale, multiorientation properties of visual spacetime. To illustrate its utility, the network has been applied to the task of dynamic texture recognition. Empirical evaluation on multiple standard datasets shows that it sets a new state-of-the-art.

READ FULL TEXT
research
01/17/2012

Spatiotemporal Gabor filters: a new method for dynamic texture recognition

This paper presents a new method for dynamic texture recognition based o...
research
04/02/2018

Multilayer Complex Network Descriptors for Color-Texture Characterization

A new method based on complex networks is proposed for color-texture ana...
research
03/23/2018

What Do We Understand About Convolutional Networks?

This document will review the most prominent proposals using multilayer ...
research
01/31/2018

Multilayer Network Planning - A Practical Perspective

The paper presents a pragmatic and practical multilayer network planning...
research
03/12/2017

Multiscale Hierarchical Convolutional Networks

Deep neural network algorithms are difficult to analyze because they lac...
research
07/27/2023

Learning cross-layer dependence structure in multilayer networks

Multilayer networks are a network data structure in which elements in a ...

Please sign up or login with your details

Forgot password? Click here to reset