Convolutional networks inherit frequency sensitivity from image statistics

10/03/2022
by   Charles Godfrey, et al.
0

It is widely acknowledged that trained convolutional neural networks (CNNs) have different levels of sensitivity to signals of different frequency. In particular, a number of empirical studies have documented CNNs sensitivity to low-frequency signals. In this work we show with theory and experiments that this observed sensitivity is a consequence of the frequency distribution of natural images, which is known to have most of its power concentrated in low-to-mid frequencies. Our theoretical analysis relies on representations of the layers of a CNN in frequency space, an idea that has previously been used to accelerate computations and study implicit bias of network training algorithms, but to the best of our knowledge has not been applied in the domain of model robustness.

READ FULL TEXT

page 6

page 7

page 8

page 9

page 16

research
11/27/2019

Exploring Frequency Domain Interpretation of Convolutional Neural Networks

Many existing interpretation methods of convolutional neural networks (C...
research
11/10/2015

Analyzing Stability of Convolutional Neural Networks in the Frequency Domain

Understanding the internal process of ConvNets is commonly done using vi...
research
05/29/2019

Learning Robust Global Representations by Penalizing Local Predictive Power

Despite their renowned predictive power on i.i.d. data, convolutional ne...
research
03/03/2023

Linear CNNs Discover the Statistical Structure of the Dataset Using Only the Most Dominant Frequencies

Our theoretical understanding of the inner workings of general convoluti...
research
09/16/2021

Dense Pruning of Pointwise Convolutions in the Frequency Domain

Depthwise separable convolutions and frequency-domain convolutions are t...
research
02/10/2020

Discrete Chi-square Method for Detecting Many Signals

Unambiguous detection of signals superimposed on unknown trends is diffi...
research
02/07/2023

Towards causally linking architectural parametrizations to algorithmic bias in neural networks

Training dataset biases are by far the most scrutinized factors when exp...

Please sign up or login with your details

Forgot password? Click here to reset