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Depth analysis of monocular natural scenes using gray level co-occurrence matrix

机译:使用灰度共生矩阵对单眼自然场景进行深度分析

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Representation of depth in a real world environment is an essential attribute of its semantic representation. A coarse estimate of image-depth (defined as mean distance between the object and the observer) is relevant for identifying the context of the scene and can be used to facilitate search and recognition of objects. In this paper, a GLCM based scheme is proposed to analyze the depth information of real world natural scenes. A distant image being smoother has a low value of dissimilarity. This quantization helps in the categorization of scenes into three classes viz. ‘near’ (less than 5 meters), ‘not-so-near’ (about 50 meters), and ‘far’ (beyond 500 meters). In the proposed method, at each image pixel, a set of co-occurrence matrices is calculated for different orientations and inter-pixel distances. From these matrices, dissimilarity feature is extracted which characterizes the neighborhood of the concerned pixel. Image features thus extracted are used to classify natural scene images into ‘near’, ‘not-so-near’ and ‘far’ categories with the help of a probabilistic neural network classifier.
机译:现实环境中深度的表示是其语义表示的重要属性。图像深度的粗略估计(定义为对象与观察者之间的平均距离)与识别场景的上下文有关,可用于促进对象的搜索和识别。本文提出了一种基于GLCM的方案来分析现实世界自然场景的深度信息。较平滑的远距离图像具有较低的相异值。该量化有助于将场景分类为三个类别。 “近”(小于5米),“不太近”(约50米)和“远”(超过500米)。在提出的方法中,在每个图像像素处,针对不同的方向和像素间距离计算一组共现矩阵。从这些矩阵中提取出相异特征,该相异特征表征了相关像素的邻域。这样提取的图像特征在概率神经网络分类器的帮助下,用于将自然场景图像分为“近”,“不太近”和“远”类别。

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