Comparison of Methods Generalizing Max- and Average-Pooling

03/02/2021
by   Florentin Bieder, et al.
0

Max- and average-pooling are the most popular pooling methods for downsampling in convolutional neural networks. In this paper, we compare different pooling methods that generalize both max- and average-pooling. Furthermore, we propose another method based on a smooth approximation of the maximum function and put it into context with related methods. For the comparison, we use a VGG16 image classification network and train it on a large dataset of natural high-resolution images (Google Open Images v5). The results show that none of the more sophisticated methods perform significantly better in this classification task than standard max- or average-pooling.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/01/2021

Maximal function pooling with applications

Inspired by the Hardy-Littlewood maximal function, we propose a novel po...
research
11/08/2018

Alpha-Pooling for Convolutional Neural Networks

Convolutional neural networks (CNNs) have achieved remarkable performanc...
research
02/07/2013

Fast Image Scanning with Deep Max-Pooling Convolutional Neural Networks

Deep Neural Networks now excel at image classification, detection and se...
research
09/30/2015

Generalizing Pooling Functions in Convolutional Neural Networks: Mixed, Gated, and Tree

We seek to improve deep neural networks by generalizing the pooling oper...
research
03/02/2022

The Theoretical Expressiveness of Maxpooling

Over the decade since deep neural networks became state of the art image...
research
06/02/2020

Studying The Effect of MIL Pooling Filters on MIL Tasks

There are different multiple instance learning (MIL) pooling filters use...
research
04/02/2020

ProxyNCA++: Revisiting and Revitalizing Proxy Neighborhood Component Analysis

We consider the problem of distance metric learning (DML), where the tas...

Please sign up or login with your details

Forgot password? Click here to reset