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Region Naming Strategy for Image Parsing Using Neural Network

机译:神经网络的图像解析区域命名策略

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摘要

The object recognition problem is to determine which, if any, of a given set of objects appear in a given image or image sequence. Thus object recognition is a problem of matching models from a database with representations of those models extracted from the image luminance data. we propose a approach to the object recognition problem, motivated by the recent availability of large annotated image collections. In this approach we use the translation of image regions to words, similar to the translation of text from one language to another. The lexicon for the translation is learned from large annotated image collections, which consist of images that are associated with text. In this approach, we first segment the image into region, each of this region is represented by a token. The region are clustered in the tokens. This tokens are then match with the database to identify objects.
机译:对象识别问题是确定给定对象集中哪些对象出现在给定图像或图像序列中。因此,对象识别是将来自数据库的模型与从图像亮度数据提取的那些模型的表示进行匹配的问题。我们提出了一种对象识别问题的方法,该方法受大型带注释的图像集的最新可用性推动。在这种方法中,我们使用图像区域到单词的翻译,类似于文本从一种语言到另一种语言的翻译。翻译的词典是从大型带注释的图像集中学习的,这些图像集中包含与文本关联的图像。在这种方法中,我们首先将图像分割成区域,每个区域都由一个标记表示。该区域聚集在令牌中。然后将此令牌与数据库匹配以标识对象。

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