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Detection of artificial structures in natural-scene images using dynamic trees

机译:使用动态树检测自然场景图像中的人工结构

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We seek a framework that addresses localization, detection and recognition of man-made objects in natural-scene images in a unified manner. We propose to model artificial structures by dynamic tree-structured belief networks (DTSBNs). DTSBNs provide for a distribution over tree structures that we learn using our structured approximation (SVA) inference algorithm. Furthermore, we propose multiscale linear-discriminant analysis (MLDA) as a feature extraction method, which appears well suited for our goals, as we assume that man-made objects are characterized primarily by geometric regularities and by patches of uniform color. MLDA extracts edges over a finite range of locations, orientations and scales, decomposing an image into dyadic squares. Both the color of dyadic squares and the geometric properties of extracted edges represent observable input to our DTSBNs. Experimental results demonstrate that DTSBNs, trained on MLDA features, offer a viable solution for detection of artificial structures in natural-scene images.
机译:我们寻求一种框架,以统一的方式解决自然场景图像中人造物体的定位,检测和识别问题。我们建议通过动态树结构信念网络(DTSBN)对人工结构进行建模。 DTSBN在我们使用结构化近似(SVA)推理算法学习的树结构上提供分布。此外,我们提出多尺度线性判别分析(MLDA)作为特征提取方法,这似乎非常适合我们的目标,因为我们假设人造对象的主要特征是几何规律性和均匀色块。 MLDA会在位置,方向和比例尺的有限范围内提取边缘,从而将图像分解为二进角正方形。二进角正方形的颜色和提取边缘的几何属性都表示可观察到的DTSBN输入。实验结果表明,经过MLDA功能训练的DTSBN,为检测自然场景图像中的人工结构提供了可行的解决方案。

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