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Survey on Scene Classification techniques

机译:场景分类技术调查

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摘要

Scene classification is emerging research areas in the field of computer vision, as it can be used in several applications such as surveillance, autonomous driving, robotics, and many more. Scene classification is to classify the scene as one of the categories predefined as a kitchen, coast, forest, living room, etc. This paper highlights the prevailing scene classification practices by summarizing the major categories of the scene classification available in the literature. Traditionally to classify the scene, researchers used local features such as Scale Invariant Feature Transform (SIFT), Speeded-Up Robust Features (SURF) or the global features like GIST from the image and classify using supervised learning method like Support Vector Machine (SVM). Nowadays deep learning based approaches are widely used as the approaches do not have to manually extract the features and can learn automatically. This paper discusses various traditional and deep learning based approaches for indoor and outdoor scene classification with their challenges. We also present analysis of state-of-the-art methods with their advantages and disadvantages for scene classification.
机译:场景分类是计算机视觉领域的新兴研究领域,因为它可用于监视,自动驾驶,机器人等多种应用。场景分类是将场景分类为预定义的类别之一,如厨房,海岸,森林,客厅等。本文通过总结文献中可用的场景分类的主要类别,重点介绍了流行的场景分类实践。传统上对场景进行分类,研究人员使用局部特征(例如尺度不变特征变换(SIFT),加速鲁棒特征(SURF)或图像中的全局特征如GIST),并使用监督学习方法(如支持向量机(SVM))进行分类。 。如今,基于深度学习的方法已被广泛使用,因为这些方法不必手动提取特征即可自动学习。本文讨论了各种基于室内和室外场景分类的传统方法和基于深度学习的方法及其挑战。我们还介绍了最新方法的分析以及它们在场景分类中的优点和缺点。

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