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Visual descriptors for scene categorization: experimental evaluation

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posted on 2024-11-15, 05:29 authored by Xue Wei, Son Lam PhungSon Lam Phung, Abdesselam BouzerdoumAbdesselam Bouzerdoum
Humans are endowed with the ability to grasp the overall meaning or the gist of a complex visual scene at a glance. We need only a fraction of a second to decide if a scene is indoors, outdoors, on a busy street, or on a clear beach. In recent years, computational gist recognition or scene categorization has been actively pursued, given its numerous applications in image and video search, surveillance, and assistive navigation. Many visual descriptors have been developed to address the challenges in scene categorization, including the large number of semantic categories and the tremendous variations caused by imaging conditions. This paper provides a critical review of visual descriptors used for scene categorization, from both methodological and experimental perspectives. We present an empirical study conducted on four benchmark data sets assessing the classification accuracy and class separability of state-of-the-art visual descriptors.

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Citation

X. Wei, S. Lam. Phung & A. Bouzerdoum, "Visual descriptors for scene categorization: experimental evaluation," Artificial Intelligence Review: an international survey and tutorial journal, vol. 45, pp. 333-368, 2016.

Journal title

Artificial Intelligence Review

Volume

45

Issue

3

Pagination

333-368

Language

English

RIS ID

104094

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