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A new fast object detection architecture combing manually-designed feature and CNN

机译:一种新的快速物体检测架构,梳理手动设计的功能和CNN

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We proposed a new fast object detection architecture based on region, which consists of two stages, using manually-designed features and convolutional neural network (CNN) respectively. The first stage is generating many initial proposal windows, and then do objectness measure and ranking, to reduce the quantity of proposal windows. In this stage, we apply four manually-designed objectness features that take much less time to compute. To do the ranking, we apply methods based on ranking SVM and non-max suppression. The second stage is that Deep CNN classifies the candidate windows into special-category and makes the final detection results. Since every window's CNN features computation time consumption is very expensive, we reduce the large set of initial proposal window in an image to small set of candidate windows to reduce the total time of computing CNN features of an image, and thus save the detection run-time. The experiment shows our proposed method achieved the comparable result on VOC 2007 with the state-of-the-art with about half time consumption.
机译:我们提出了一种基于区域的新的快速物体检测架构,该架构分别由两个阶段组成,使用手动设计的特征和卷积神经网络(CNN)。第一阶段正在生成许多初始提议窗口,然后进行对象测量和排名,以减少提案窗口的数量。在此阶段,我们应用四个手动设计的象性功能,这些特征需要更少的时间来计算。要进行排名,我们基于排序SVM和非最大抑制应用方法。第二阶段是深度CNN将候选窗口分类为特殊类别并进行最终的检测结果。由于每个窗口的CNN功能计算时间消耗非常昂贵,我们将图像中的大集中初始提案窗口减少到少量候选窗口,以减少计算图像的CNN特征的总时间,从而保存检测运行 - 时间。实验表明,我们的提出方法在VOC 2007上实现了与最先进的耗材的可比结果。

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