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Learning Scene Attribute for Scene Recognition

机译:学习场景识别的场景属性

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摘要

Scene recognition has been a challenging task in the field of computer vision and multimedia for a long time. The current scene recognition works often extract object features and scene features through CNN, and combine these two types of features to obtain complementary and discriminative scene representations. However, when the scene categories are visually similar, the object features might lack of discriminations. Therefore, it may be debatable to consider only object features. In contrast to the existing works, in this paper, we discuss the discrimination of scene attributes in local regions and utilize scene attributes as the complementary features of object and scene features. We extract these visual features from two individual CNN branches, one extracting the global features of the image while the other extracting the features of local regions. Through contextual modeling framework, we aggregate these features and generate more discriminative scene representations, which achieve better performance than the feature aggregation of object and scene. Moreover, we achieve the new state-of-the-art performance on both standard scene recognition benchmarks by aggregating more complementary visual features: MIT67 (88.06%) and SUN397 (74.12%).
机译:很长一段时间,场景识别在计算机视觉和多媒体领域一直是一个具有挑战性的任务。当前场景识别经常通过CNN提取对象特征和场景特征,并结合这两种类型的特征来获得互补和鉴别的场景表示。但是,当场景类别在视觉上类似时,对象特征可能缺乏歧视。因此,可能是值得简言,以考虑对象特征。与现有的作品相比,在本文中,我们讨论了本地区域中场景属性的辨别,并利用场景属性作为对象和场景特征的互补特征。我们从两个单独的CNN分支中提取这些视觉特征,其中一个提取图像的全局特征,而另一个提取本地区域的特征。通过上下文建模框架,我们聚合这些功能并生成更多的辨别场景表示,其比对象和场景的特征聚合实现更好的性能。此外,我们通过聚合更多互补的视觉特征:MIT67(88.06%)和Sun397(74.12%)来实现新的最先进的性能。

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