Scene understanding — A survey

S. Aarthi, S. Chitrakala
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引用次数: 21

Abstract

In recent times, scene understanding holds a great position in computer vision due to its real time perceiving, analyzing and elaborating an interpretation of dynamic scene which leads to new discoveries. A scene is a view of real world environment with multiple objects and surfaces in a meaningful way. Objects are compact and act upon whereas scene are extended in space and act within. The visual information can be given with many features such as Colors, Luminance and contours or in the form of Shapes, Parts and Textures or through semantic context. The goal of scene understanding is to make machines look like humans, to have a complete understanding of visual scenes. Scene understanding is influenced by cognitive vision with an involvement of major areas like computer vision, cognitive engineering and software engineering. Due to its enormous growth many outstanding universities like Boston University, Stafford Vision lab, Scene grammar lab, air lab, Laboratory Machine Vision and Pattern Recognition have been perseveringly working for added improvements in this area. This paper discusses an extensive survey of scene understanding with various strategies and methods.
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场景理解——调查
近年来,场景理解在计算机视觉中占有重要的地位,因为它能够实时地感知、分析和阐述动态场景,从而带来新的发现。场景是以一种有意义的方式呈现具有多个对象和表面的真实世界环境。物体是紧凑的,并对其产生作用,而场景则在空间上扩展,并在其中起作用。视觉信息可以用颜色、亮度和轮廓等多种特征来表示,也可以以形状、部件和纹理的形式表示,也可以通过语义上下文表示。场景理解的目标是让机器看起来像人类,对视觉场景有一个完整的理解。场景理解受到认知视觉的影响,涉及计算机视觉、认知工程和软件工程等主要领域。由于其巨大的增长,许多优秀的大学,如波士顿大学,斯塔福德视觉实验室,场景语法实验室,空气实验室,实验室机器视觉和模式识别一直在坚持不懈地为这一领域的进一步改进而努力。本文讨论了场景理解的各种策略和方法的广泛调查。
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