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Detector of Small Objects with Application to the License Plate Symbols

机译:小物体检测器及其在车牌符号中的应用

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In the article we look at an architecture of a detector of groups of small objects in close proximity to each other with distances between them as short as couples of pixels. In modern days the issue with detection of such small objects using a neural network is often the pooling based architecture leading to spatial information loss. We suggest a model of a convolutional network based on a fully connected convo-lutional network such as Network in Network (NiN). Accuracy of the detector is measured in a license plate recognition problem when images of license plates are produced by roads and highways video surveillance systems. Our aim is to present a solution to a specific problem without regards to use case specifics such as license plate edge detection, segmentation, and binarization of symbols. We focus on symbol detection and we process raw grayscale data. Furthermore we avoid license plate pattern detection and matching. In spite of narrow conditions we put on the problem the result we achieve is useful since it can be universally applied to many kinds of real world problems due to it being invariant to orientation in space and having low requirements to quality of an image. There are no particular requirements to size of an image being processed, but scaling might require to be executed in order to fit symbols in a predefined range, which in most commonly used systems is achievable due to positions of cameras and surveilled objects being known in advance. In our benchmarking we achieved mean Average Precision (mAP) of 90.25% which is on the level with modern automatic recognition systems for license plates.
机译:在本文中,我们介绍了一种由小物体组成的检测器的体系结构,这些小物体彼此非常接近,它们之间的距离短于几个像素。在现代,使用神经网络检测此类小物体的问题通常是基于池的体系结构,导致空间信息丢失。我们建议一种基于完全连接的卷积网络(例如,网络中的网络(NiN))的卷积网络模型。当通过道路和高速公路视频监视系统生成车牌图像时,在车牌识别问题中测量检测器的精度。我们的目标是提供一种针对特定问题的解决方案,而无需考虑用例的具体情况,例如车牌边缘检测,分段和符号二值化。我们专注于符号检测,并处理原始灰度数据。此外,我们避免了车牌图案的检测和匹配。尽管条件狭窄,但是我们提出的结果还是有用的,因为它对于空间方向不变并且对图像质量的要求低,因此可以普遍应用于许多现实世界中的问题。对要处理的图像的大小没有特殊要求,但是可能需要执行缩放以将符号适合在预定范围内,这在最常用的系统中是可以实现的,这是因为摄像机和被监视对象的位置是预先已知的。在我们的基准测试中,我们实现了平均平​​均精度(mAP)为90.25%,这与现代车牌自动识别系统的水平相当。

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