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Weather Classification: A new multi-class dataset, data augmentation approach and comprehensive evaluations of Convolutional Neural Networks

Weather Classification: A new multi-class dataset, data augmentation approach and comprehensive evaluations of Convolutional Neural Networks
Weather Classification: A new multi-class dataset, data augmentation approach and comprehensive evaluations of Convolutional Neural Networks
Weather conditions often disrupt the proper functioning of transportation systems. Present systems either deploy an array of sensors or use an in-vehicle camera to predict weather conditions. These solutions have resulted in incremental cost and limited scope. To ensure smooth operation of all transportation services in all-weather conditions, a reliable detection system is necessary to classify weather in wild. The challenges involved in solving this problem is that weather conditions are diverse in nature and there is an absence of discriminate features among various weather conditions. The existing works to solve this problem have been scene specific and have targeted classification of two categories of weather. In this paper, we have created a new open source dataset consisting of images depicting three classes of weather i.e rain, snow and fog called RFS Dataset. A novel algorithm has also been proposed which has used super pixel delimiting masks as a form of data augmentation, leading to reasonable results with respect to ten Convolutional Neural Network architectures
Weather Classification, Convolutional Neural Network, Superpixels, Data Augmentation
305-310
IEEE
Villarreal Guerra, Jose Carlos
b7919a87-f72e-4be1-a3be-15d57dd6499f
Khanam, Zeba
9b47373e-bfe7-4882-947c-a78db5e6e1cb
Ehsan, Shoaib
ae8922f0-dbe0-4b22-8474-98e84d852de7
Stolkin, Rustam
b373b8ef-a044-4d01-85f0-5d242dc5a062
McDonald-Maier, Klaus
4429a771-384b-4cc6-8d45-1813c3792939
Villarreal Guerra, Jose Carlos
b7919a87-f72e-4be1-a3be-15d57dd6499f
Khanam, Zeba
9b47373e-bfe7-4882-947c-a78db5e6e1cb
Ehsan, Shoaib
ae8922f0-dbe0-4b22-8474-98e84d852de7
Stolkin, Rustam
b373b8ef-a044-4d01-85f0-5d242dc5a062
McDonald-Maier, Klaus
4429a771-384b-4cc6-8d45-1813c3792939

Villarreal Guerra, Jose Carlos, Khanam, Zeba, Ehsan, Shoaib, Stolkin, Rustam and McDonald-Maier, Klaus (2018) Weather Classification: A new multi-class dataset, data augmentation approach and comprehensive evaluations of Convolutional Neural Networks. In 2018 NASA/ESA Conference on Adaptive Hardware and Systems (AHS). IEEE. pp. 305-310 . (doi:10.1109/AHS.2018.8541482).

Record type: Conference or Workshop Item (Paper)

Abstract

Weather conditions often disrupt the proper functioning of transportation systems. Present systems either deploy an array of sensors or use an in-vehicle camera to predict weather conditions. These solutions have resulted in incremental cost and limited scope. To ensure smooth operation of all transportation services in all-weather conditions, a reliable detection system is necessary to classify weather in wild. The challenges involved in solving this problem is that weather conditions are diverse in nature and there is an absence of discriminate features among various weather conditions. The existing works to solve this problem have been scene specific and have targeted classification of two categories of weather. In this paper, we have created a new open source dataset consisting of images depicting three classes of weather i.e rain, snow and fog called RFS Dataset. A novel algorithm has also been proposed which has used super pixel delimiting masks as a form of data augmentation, leading to reasonable results with respect to ten Convolutional Neural Network architectures

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More information

Published date: 9 August 2018
Venue - Dates: 2018 NASA/ESA Conference on Adaptive Hardware and Systems (AHS), , Edinburgh, United Kingdom, 2018-08-06 - 2018-08-09
Keywords: Weather Classification, Convolutional Neural Network, Superpixels, Data Augmentation

Identifiers

Local EPrints ID: 472628
URI: http://eprints.soton.ac.uk/id/eprint/472628
PURE UUID: 251ad803-4e11-4b48-9b72-86bae5e519fa
ORCID for Shoaib Ehsan: ORCID iD orcid.org/0000-0001-9631-1898

Catalogue record

Date deposited: 12 Dec 2022 17:52
Last modified: 17 Mar 2024 04:16

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Contributors

Author: Jose Carlos Villarreal Guerra
Author: Zeba Khanam
Author: Shoaib Ehsan ORCID iD
Author: Rustam Stolkin
Author: Klaus McDonald-Maier

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