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Adaptable models and semantic filtering for object recognition in street images

机译:自适应模型和语义过滤,用于街道图像中的目标识别

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摘要

The need for a generic and adaptable object detection and recognition method in images, is becoming a necessity today, given the rapid development of the internet and multimedia databases in general. This paper compares the state-of-the-art in object recognition and proposes a method based on adaptable models for detecting thematic categories of objects. Furthermore, automatically constructed semantics are used for filtering false positive objects. The classification of objects into categories is performed by the popular Adaboost. The method has been used for identifying car objects and so far has indicated not only accurate recognition performance, but also good adaptability to new objects types.
机译:鉴于互联网和多媒体数据库的快速发展,当今对于图像中的通用且可适应的对象检测和识别方法的需求已成为必需。本文比较了对象识别的最新技术,并提出了一种基于自适应模型的对象主题类别检测方法。此外,自动构造的语义用于过滤误报对象。流行的Adaboost将对象分类。该方法已用于识别汽车物体,到目前为止,它不仅显示出准确的识别性能,而且还具有对新物体类型的良好适应性。

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