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From the Academy: Image recognition: Visual grouping recognition and learning

机译:来自学院:图像识别:视觉分组识别和学习

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摘要

Vision extracts useful information from images. Reconstructing the three-dimensional structure of our environment and recognizing the objects that populate it are among the most important functions of our visual system. Computer vision researchers study the computational principles of vision and aim at designing algorithms that reproduce these functions. Vision is difficult: the same scene may give rise to very different images depending on illumination and viewpoint. Typically, an astronomical number of hypotheses exist that in principle have to be analyzed to infer a correct scene description. Moreover, image information might be extracted at different levels of spatial and logical resolution dependent on the image processing task. Knowledge of the world allows the visual system to limit the amount of ambiguity and to greatly simplify visual computations. We discuss how simple properties of the world are captured by the Gestalt rules of grouping, how the visual system may learn and organize models of objects for recognition, and how one may control the complexity of the description that the visual system computes.
机译:视觉从图像中提取有用的信息。重建环境的三维结构并识别构成该环境的对象是视觉系统最重要的功能之一。计算机视觉研究人员研究视觉的计算原理,旨在设计可再现这些功能的算法。视觉困难:根据照明和视点,同一场景可能会产生非常不同的图像。通常,存在大量的天文学假设,原则上必须对其进行分析以推断出正确的场景描述。而且,取决于图像处理任务,可以在空间和逻辑分辨率的不同级别上提取图像信息。对世界的了解使视觉系统能够限制歧义的数量并大大简化视觉计算。我们讨论了格式塔的分组规则如何捕获世界的简单属性,视觉系统如何学习和组织用于识别的对象模型,以及人们如何控制视觉系统计算的描述的复杂性。

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