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CNN Computer for High Speed Visual Inspection.

机译:CNN计算机用于高速视觉检查。

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An image entails a huge amount of data and information. For this reason, image synthesis and analysis by computer systems requires a high processing time. This represents a handicap in systems where real time processing or an immediate interpretation is demanded as in visual inspection industrial applications. Present work, introduces a computer architecture for the construction of a compact real-time system for high speed visual inspection. The vision system is essentially a Cellular Neural Network Computer (CNN-C) basically composed of a Cellular Neural Network Universal Machine (CNN-UM), an analog memory, an imager and a control unit with mixed-signal properties. This prototype has some limitations, but represents the first approximation of a new kind of systems for visual inspection. The CNN-C prototype will be tested in visual inspection of paper, metal and polymer surfaces. Besides the CNN-C can be used in many other image processing tasks, such as coding, singularity detection or multiresolution representation.
机译:图像需要大量的数据和信息。因此,计算机系统的图像合成和分析需要高处理时间。这代表了系统中的障碍,其中需要实时处理或立即解释,如在视觉检查工业应用中。目前的工作,介绍了一种计算机架构,用于建造一个紧凑的实时系统,用于高速目视检查。视觉系统基本上是一种蜂窝神经网络计算机(CNN-C),基本上由蜂窝神经网络通用机器(CNN-UM),模拟存储器,成像器和具有混合信号特性的控制单元组成。该原型具有一些局限性,但代表了一种用于目视检查的新型系统的第一个近似。 CNN-C原型将在纸张,金属和聚合物表面的目视检查中进行测试。除了CNN-C可以在许多其他图像处理任务中使用,例如编码,奇点检测或多分辨率表示。

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