Perceptual-Based Textures for Scene Labeling: A Bottom-Up and a Top-Down Approach

Gaëtan Martens, C. Poppe, P. Lambert, R. Van de Walle
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引用次数: 1

Abstract

Due to the semantic gap, the automatic interpretation of digital images is a very challenging task. Both the segmentation and classification are intricate because of the high variation of the data. Therefore, the application of appropriate features is of utter importance. This paper presents biologically inspired texture features for material classification and interpreting outdoor scenery images. Experiments show that the presented texture features obtain the best classification results for material recognition compared to other well-known texture features, with an average classification rate of 93.0%. For scene analysis, both a bottom-up and top-down strategy are employed to bridge the semantic gap. At first, images are segmented into regions based on the perceptual texture and next, a semantic label is calculated for these regions. Since this emerging interpretation is still error prone, domain knowledge is ingested to achieve a more accurate description of the depicted scene. By applying both strategies, 91.9% of the pixels from outdoor scenery images obtained a correct label.
基于感知的场景标记纹理:自下而上和自上而下的方法
由于语义差距的存在,数字图像的自动判读是一项非常具有挑战性的任务。由于数据的高度变化,分割和分类都是复杂的。因此,适当的特征的应用是非常重要的。本文提出了一种受生物学启发的纹理特征,用于室外风景图像的材料分类和解释。实验表明,与其他已知纹理特征相比,本文提出的纹理特征对材料识别的分类效果最好,平均分类率为93.0%。对于场景分析,采用自底向上和自顶向下两种策略来弥补语义差距。首先,基于感知纹理将图像分割成区域,然后计算这些区域的语义标签。由于这种新兴的解释仍然容易出错,因此需要吸收领域知识来实现对所描述场景的更准确描述。采用这两种策略,91.9%的户外风景图像像素获得了正确的标签。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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