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Hierarchical architectures for computer vision

机译:计算机视觉的分层体系结构

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High computer performance depends only partially on using faster and more reliable hardware, but to a large extent it depends on the architecture and on the processing techniques. An effective platform that matches general planning strategies is given by the hierarchical paradigm. This is true particularly in the field of image processing and computer vision, which is characterized by very large quantity of sensory data, but in which most of the information collected is meaningless for the task at end. Real time performances can be achieved only by applying some attentional mechanisms that allow to restrict the computation just on the relevant data, at the right time. Several vision systems have been proposed and designed to support the implementation of these strategies. In this work, after introducing a taxonomy of the hierarchical machine vision systems, a short description of the most popular implementations is given.
机译:较高的计算机性能仅部分取决于使用更快,更可靠的硬件,但在很大程度上取决于体系结构和处理技术。分层范式提供了一个与总体规划策略相匹配的有效平台。这在图像处理和计算机视觉领域尤其如此,其特征是非常大量的感觉数据,但是其中收集的大多数信息对于最终任务毫无意义。实时性能只能通过应用一些注意机制来实现,这些机制允许在适当的时间仅对相关数据进行限制的计算。已经提出并设计了几种视觉系统来支持这些策略的实施。在这项工作中,在介绍了分层机器视觉系统的分类法之后,给出了最流行的实现的简短描述。

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