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Hybrid Cascade Structure for License Plate Detection in Large Visual Surveillance Scenes

机译:大型视觉监控场景中用于车牌检测的混合级联结构

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摘要

Though license plate detection has been successfully applied in some commercial products, the detection of small and vague license plates in real applications is still an open problem. In this paper, we propose a novel hybrid cascade structure for fast detecting small and vague license plates in large and complex visual surveillance scenes. For rapid license plate candidate extraction, we propose two cascade detectors, including the Cascaded Color Space Transformation of Pixel detector and the Cascaded Contrast-Color Haar-like detector; these two cascade detectors can do coarse-to-fine detection in the front and in the middle of the hybrid cascade. In the end of the hybrid cascade, we propose a cascaded convolutional network structure (Cascaded ConvNet), including two detection-ConvNets and a calibration-ConvNet, which is designed to do fine detection. Through experiments with different evaluation data sets with many small and vague plates, we show that the proposed framework is able to rapidly detect license plates with different resolutions and different sizes in large and complex visual surveillance scenes.
机译:尽管车牌检测已成功应用于某些商业产品,但是在实际应用中检测小而模糊的车牌仍然是一个未解决的问题。在本文中,我们提出了一种新颖的混合级联结构,用于在大型和复杂的视觉监视场景中快速检测小的和模糊的车牌。为了快速提取候选车牌,我们提出了两种级联检测器,包括像素级联的色彩空间变换检测器和类比的对比度色哈尔型检测器。这两个级联检测器可以在混合级联的前端和中间进行从粗到细的检测。在混合级联的最后,我们提出了一种级联卷积网络结构(级联的ConvNet),其中包括两个检测ConvNet和一个校准ConvNet,旨在进行精细检测。通过使用带有许多小而模糊的车牌的不同评估数据集进行的实验,我们证明了所提出的框架能够在大型和复杂的视觉监视场景中快速检测具有不同分辨率和大小的车牌。

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