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Design and Optimization of Real-Time Boosting for Image Interpretation Based on FPGA Architecture

机译:基于FPGA架构的图像实时增强的设计与优化。

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This paper presents a reconfigurable architecture of a classification module based on the Adaboost algorithm. This architecture is used for object detection based on the attributes of color and texture. The Adaboost algorithm module uses the technique of decision trees as weak classifiers. This high-performance architecture processes up to 325 dense images of size 640 × 480 pixels, classifying all the structured objects contained on the image. Classification results are provided on an image with the same size. Both architectures, Adaboost algorithm and decision trees, are discussed and compared with several studies found in the literature. The conclusions and perspectives of the project are provided at the end of this document.
机译:本文提出了一种基于Adaboost算法的分类模块的可重构体系结构。该体系结构用于基于颜色和纹理的属性进行对象检测。 Adaboost算法模块使用决策树技术作为弱分类器。这种高性能的体系结构可处理多达325张大小为640×480像素的密集图像,对图像中包含的所有结构化对象进行分类。在具有相同尺寸的图像上提供分类结果。讨论了两种架构,即Adaboost算法和决策树,并与文献中的数项研究进行了比较。本文件的结尾提供了该项目的结论和观点。

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