基于空间包络和背景知识的场景分类问题

Benrais Lamine, N. Baha
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摘要

场景分类问题是人工视觉研究的主要领域之一。为场景分配正确标签的能力可以为自动过程提供显著的优势,以实现其任务。本文探讨了使用物体作为属性和离散空间包络理论对场景进行分类的可能性。挑战在于能够使用提出的背景知识和排序功能区分场景中所有现有对象中最具判别性的对象。然后,通过提出的离散空间包络理论来指导分类过程,以提供准确和连贯的场景类别。该方法在极具挑战性的SUN397数据集上提供了非常令人满意的结果,高达69.92%的良好分类场景。与一些现有的最先进的方法相比,所提出的方法的特点是提出了更高的分类率。
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Spatial envelope and background knowledge for scene classification problem
Scene classification problem is one of the major fields of research in artificial vision. The ability to assign the correct label to a scene can provide a significant advantage to automatic processes in order to achieve their task. This paper explores the possibility to classify a scene using objects as attributes and a discrete spatial envelope theory. The challenge is to be able to distinguish among all the existing objects the most discriminative ones in the scene using a proposed background knowledge and sorting functions. The classification process is then guided by a proposed discrete spatial envelope theory in order to provide an accurate and coherent category of scene. The proposed approach offers very satisfying results going up to 69.92% of well classified scenes on the very challenging SUN397 dataset. Compared to some existing state of the art methods, the proposed approach distinguishes itself by proposing a higher rate of classification.
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