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Performing object detection operations via random forest classifier

机译:通过随机森林分类器执行对象检测操作

摘要

In one embodiment of the present invention, a graphics processing unit (GPU) is configured to detect an object in an image using a random forest classifier that includes multiple, identically structured decision trees. Notably, the application of each of the decision trees is independent of the application of the other decision trees. In operation, the GPU partitions the image into subsets of pixels, and associates an execution thread with each of the pixels in the subset of pixels. The GPU then causes each of the execution threads to apply the random forest classifier to the associated pixel, thereby determining a likelihood that the pixel corresponds to the object. Advantageously, such a distributed approach to object detection more fully leverages the parallel architecture of the PPU than conventional approaches. In particular, the PPU performs object detection more efficiently using the random forest classifier than using a cascaded classifier.
机译:在本发明的一个实施例中,图形处理单元(GPU)被配置为使用包括多个相同结构的决策树的随机森林分类器来检测图像中的对象。值得注意的是,每个决策树的应用都独立于其他决策树的应用。在操作中,GPU将图像划分为像素子集,并将执行线程与像素子集中的每个像素关联。然后,GPU使每个执行线程将随机森林分类器应用于关联的像素,从而确定该像素对应于对象的可能性。有利地,与常规方法相比,这种用于对象检测的分布式方法更充分地利用了PPU的并行体系结构。特别地,与使用级联分类器相比,使用随机森林分类器更有效地执行对象检测。

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