Scalable and Compact 3D Action Recognition with Approximated RBF Kernel Machines

11/28/2017
by   Jacopo Cavazza, et al.
0

Despite the recent deep learning (DL) revolution, kernel machines still remain powerful methods for action recognition. DL has brought the use of large datasets and this is typically a problem for kernel approaches, which are not scaling up efficiently due to kernel Gram matrices. Nevertheless, kernel methods are still attractive and more generally applicable since they can equally manage different sizes of the datasets, also in cases where DL techniques show some limitations. This work investigates these issues by proposing an explicit approximated representation that, together with a linear model, is an equivalent, yet scalable, implementation of a kernel machine. Our approximation is directly inspired by the exact feature map that is induced by an RBF Gaussian kernel but, unlike the latter, it is finite dimensional and very compact. We justify the soundness of our idea with a theoretical analysis which proves the unbiasedness of the approximation, and provides a vanishing bound for its variance, which is shown to decrease much rapidly than in alternative methods in the literature. In a broad experimental validation, we assess the superiority of our approximation in terms of 1) ease and speed of training, 2) compactness of the model, and 3) improvements with respect to the state-of-the-art performance.

READ FULL TEXT
research
09/06/2017

A Compact Kernel Approximation for 3D Action Recognition

3D action recognition was shown to benefit from a covariance representat...
research
06/29/2015

Bayesian Nonparametric Kernel-Learning

Kernel methods are ubiquitous tools in machine learning. They have prove...
research
02/22/2016

Preconditioning Kernel Matrices

The computational and storage complexity of kernel machines presents the...
research
02/06/2023

Toward Large Kernel Models

Recent studies indicate that kernel machines can often perform similarly...
research
08/03/2017

When Kernel Methods meet Feature Learning: Log-Covariance Network for Action Recognition from Skeletal Data

Human action recognition from skeletal data is a hot research topic and ...
research
03/23/2017

A Bag-of-Words Equivalent Recurrent Neural Network for Action Recognition

The traditional bag-of-words approach has found a wide range of applicat...
research
03/04/2014

Fast Prediction with SVM Models Containing RBF Kernels

We present an approximation scheme for support vector machine models tha...

Please sign up or login with your details

Forgot password? Click here to reset