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An integration of top-down and bottom-up visual attention for categorization of natural scene images

机译:自上而下和自下而上的视觉注意力的集成,用于自然场景图像的分类

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An integrated technology of top-down and bottom-up visual attention used to the solution of the feature selection and saliency detection problems in object extraction and categorization of natural scene images is proposed. A decision criterion based on the top-down, goal-driven component is introduced to select the features of desired detection object which best distinguish the object from the other parts of scenes in image. The bottom-up, image-driven component of visual attention can be tuned by the learnt knowledge according to the optimal features to optimize the saliency detection. The saliency detection of the interest objects is performed through each of the images by the optimized bottom-up component. The parameter value of category confidence is computed to conduct the categorization of images. The experiment on a set of natural images is carried out to test the adaptability of saliency discrimination and accuracy of image categorization provided in this paper. The experimental evidence shows that the integrated technology introduced in this paper has the capability of capture the intrinsic information with respect to image categorization.
机译:提出了一种自上而下和自下而上的视觉注意力集成技术,用于解决自然场景图像的目标提取和分类中的特征选择和显着性检测问题。引入了基于自上而下,目标驱动的组件的决策标准,以选择所需检测对象的特征,从而最好地将对象与图像中场景的其他部分区分开。视觉注意的自底向上,图像驱动的组成部分可以根据最佳功能通过学习到的知识进行调整,以优化显着性检测。感兴趣的对象的显着性检测是通过优化的自下而上的组件对每个图像进行的。计算类别置信度的参数值以进行图像分类。对一组自然图像进行了实验,以测试本文提供的显着性判别的适应性和图像分类的准确性。实验证据表明,本文介绍的集成技术具有在图像分类方面捕获固有信息的能力。

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