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Scenes vs. objects: A comparative study of two approaches to context based recognition

机译:场景与对象:对基于语境识别的两种方法的比较研究

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Contextual models play a very important role in the task of object recognition. Over the years, two kinds of contextual models have emerged: models with contextual inference based on the statistical summary of the scene (we will refer to these as scene based context models, or SBC), and models representing the context in terms of relationships among objects in the image (object based context, or OBC). In designing object recognition systems, it is necessary to understand the theoretical and practical properties of such approaches. This work provides an analysis of these models and evaluates two of their representatives using the LabelMe dataset. We demonstrate a considerable margin of improvement using the OBC style approach.
机译:背景模型在对象识别的任务中发挥着非常重要的作用。多年来,已经出现了两种语境模型:基于场景统计摘要的语境推理的模型(我们将参考基于场景的上下文模型,或SBC),以及代表在关系中的上下文的模型图像中的对象(基于对象的上下文或OBC)。在设计对象识别系统时,有必要了解这些方法的理论和实际特性。这项工作提供了对这些模型的分析,并使用LabelMe数据集进行评估其两个代表。我们使用OBC风格方法展示了相当大的改进边缘。

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