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Scene classification based on semantic labeling

José Carlos Rangel, Miguel Cazorla, Ismael García-Varea, Jesús Martínez-Gómez, Élisa Fromont, Marc Sebban

发表年份
2016
引用次数
22

摘要

Finding an appropriate image representation is a crucial problem in robotics. This problem has been classically addressed by means of computer vision techniques, where local and global features are used. The selection or/and combination of different features is carried out by taking into account repeatability and distinctiveness, but also the specific problem to solve. In this article, we propose the generation of image descriptors from general purpose semantic annotations. This approach has been evaluated as source of information for a scene classifier, and specifically using Clarifai as the semantic annotation tool. The experimentation has been carried out using the ViDRILO toolbox as benchmark, which includes a comparison of state-of-the-art global features and tools to make comparisons among them. According to the experimental results, the proposed descriptor performs similarly to well-known domain-specific image descriptors based on global features in a scene classification task. Moreover, the proposed descriptor is based on generalist annotations without any type of problem-oriented parameter tuning.

关键词

Artificial intelligenceComputer scienceClassifier (UML)Optimal distinctiveness theoryBenchmark (surveying)ToolboxPattern recognition (psychology)Machine learningDomain (mathematical analysis)Contextual image classification

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