MisConv: Convolutional Neural Networks for Missing Data

Processing of missing data by modern neural networks, such as CNNs, remains a fundamental, yet unsolved challenge, which naturally arises in many practical applications, like image inpainting or autonomous vehicles and robots. While imputation-based techniques are still one of the most popular solutions, they frequently introduce unreliable information to the data and do not take into account the uncertainty of estimation, which may be destructive for a machine learning model. In this paper, we present MisConv, a general mechanism, for adapting various CNN architectures to process incomplete images. By modeling the distribution of missing values by the Mixture of Factor Analyzers, we cover the spectrum of possible replacements and find an analytical formula for the expected value of convolution operator applied to the incomplete image. The whole framework is realized by matrix operations, which makes MisConv extremely efficient in practice. Experiments performed on various image processing tasks demonstrate that MisConv achieves superior or comparable performance to the state-of-the-art methods.

READ FULL TEXT

page 2

page 7

page 8

research
05/18/2018

Processing of missing data by neural networks

We propose a general, theoretically justified mechanism for processing m...
research
10/26/2020

Processing of incomplete images by (graph) convolutional neural networks

We investigate the problem of training neural networks from incomplete i...
research
03/27/2020

MCFlow: Monte Carlo Flow Models for Data Imputation

We consider the topic of data imputation, a foundational task in machine...
research
09/12/2023

Padding-free Convolution based on Preservation of Differential Characteristics of Kernels

Convolution is a fundamental operation in image processing and machine l...
research
07/29/2021

Subsequent embedding in image steganalysis: Theoretical framework and practical applications

Steganalysis is a collection of techniques used to detect whether secret...
research
04/21/2022

Learning spatiotemporal features from incomplete data for traffic flow prediction using hybrid deep neural networks

Urban traffic flow prediction using data-driven models can play an impor...
research
01/10/2023

Adapting to Skew: Imputing Spatiotemporal Urban Data with 3D Partial Convolutions and Biased Masking

We adapt image inpainting techniques to impute large, irregular missing ...

Please sign up or login with your details

Forgot password? Click here to reset