Object Classification in Images of Neoclassical Artifacts Using Deep Learning
Type
conference paper
Date Issued
2017
Author(s)
Bermeitinger, Bernhard
Christoforaki, Maria
Donig, Simon
Handschuh, Siegfried
Abstract
In this paper, we report on our efforts for using Deep Learning for classifying artifacts and their features in digital visuals as a part of the Neoclassica framework. It was conceived to provide scholars with new methods for analyzing and classifying artifacts and aesthetic forms from the era of Classicism. The framework accommodates both traditional knowledge representation as a formal ontology and data-driven knowledge discovery, where cultural patterns will be identified by means of algorithms in statistical analysis and machine learning. We created a Deep Learning approach trained on photographs to classify the objects inside these photographs. In a next step, we will apply a different Deep Learning approach. It is capable of locating multiple objects inside an image and classifying them with a high accuracy. ; Comment: Published in Digital Humanities 2017, Montreal, Canada
Language
English
Keywords
Neoclassicism
Deep Learning
Furniture
Art History
HSG Classification
contribution to scientific community
Book title
Digital Humanities 2017: Book of Abstracts
Start page
395
End page
397
Pages
3
Event Title
Digital Humanities 2017
Event Location
Montréal, Canada
Event Date
08.-11.08.2017
Official URL
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Format
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