Publication | Closed Access
Architectural style classification of Mexican historical buildings using deep convolutional neural networks and sparse features
49
Citations
29
References
2016
Year
Convolutional Neural NetworkEngineeringMachine LearningMexican Historical BuildingsSocial SciencesBuilt EnvironmentSparse FeaturesImage ClassificationImage AnalysisData ScienceArchitectural ModelPattern RecognitionImage-based ModelingArchitectural HistoryArchitectural Style ClassificationMachine VisionImage Classification (Visual Culture Studies)Feature LearningImage Recognition (Visual Culture Studies)DesignMexican BuildingsDeep LearningFaçadeComputer VisionArchitectural DesignCategorizationImage Classification (Electrical Engineering)
We propose a convolutional neural network to classify images of buildings using sparse features at the network’s input in conjunction with primary color pixel values. As a result, a trained neuronal model is obtained to classify Mexican buildings in three classes according to the architectural styles: prehispanic, colonial, and modern with an accuracy of 88.01%. The problem of poor information in a training dataset is faced due to the unequal availability of cultural material. We propose a data augmentation and oversampling method to solve this problem. The results are encouraging and allow for prefiltering of the content in the search tasks.
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