Litcius/Paper detail

Voting in Transfer Learning System for Ground-Based Cloud Classification

Mario Manzo

2021MDPI (MDPI AG)29 citationsDOIOpen Access PDF

Abstract

Cloud classification is a great challenge in meteorological research. The different types of clouds, currently known and present in our skies, can produce radioactive effects that impact the variation of atmospheric conditions, with consequent strong dominance over the earth’s climate and weather. Therefore, identifying their main visual features becomes a crucial aspect. In this paper, the goal is to adopt pretrained deep neural networks-based architecture for clouds image description, and subsequently, classification. The approach is pyramidal. Proceeding from the bottom up, it partially extracts previous knowledge of deep neural networks related to original task and transfers it to the new task. The updated knowledge is integrated in a voting context to provide a classification prediction. The framework trains the neural models on unbalanced sets, a condition that makes the task even more complex, and combines the provided predictions through statistical measures. An experimental phase on different cloud image datasets is performed, and the results achieved show the effectiveness of the proposed approach with respect to state-of-the-art competitors.

Topics & Concepts

Computer scienceTransfer of learningCloud computingArtificial neural networkArtificial intelligenceMachine learningDeep learningContext (archaeology)Task (project management)Contextual image classificationImage (mathematics)GeographyEngineeringOperating systemSystems engineeringArchaeologySolar Radiation and PhotovoltaicsAtmospheric aerosols and cloudsAdvanced Image Fusion Techniques
Voting in Transfer Learning System for Ground-Based Cloud Classification | Litcius