Deep learning for scene recognition from visual data: a survey
Alina Matei, Andreea Glavan, and Estefania Talavera

TL;DR
This survey reviews recent deep learning methods for scene recognition from visual data, covering datasets, ensemble techniques, challenges, and future research directions in the emerging field of computer vision.
Contribution
It provides a comprehensive overview of current deep learning approaches, datasets, and ensemble methods in scene recognition, guiding future research and model selection.
Findings
Deep learning has significantly advanced scene recognition.
Ensemble techniques improve recognition accuracy.
Identified key challenges and future research directions.
Abstract
The use of deep learning techniques has exploded during the last few years, resulting in a direct contribution to the field of artificial intelligence. This work aims to be a review of the state-of-the-art in scene recognition with deep learning models from visual data. Scene recognition is still an emerging field in computer vision, which has been addressed from a single image and dynamic image perspective. We first give an overview of available datasets for image and video scene recognition. Later, we describe ensemble techniques introduced by research papers in the field. Finally, we give some remarks on our findings and discuss what we consider challenges in the field and future lines of research. This paper aims to be a future guide for model selection for the task of scene recognition.
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