AVM Image Quality Enhancement by Synthetic Image Learning for Supervised Deblurring

Kazutoshi Akita, Masayoshi Hayama, Haruya Kyutoku, N. Ukita
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引用次数: 1

Abstract

An Around View Monitoring (AVM) system is widely used to allow a driver to watch the situation around a car. The AVM image is generated by image distortion correction and viewpoint transformation for images captured by wide view-angle cameras installed on the car. However, the AVM image is blurred due to these transformations. This blur impairs the visibility of the driver. While many deblurring methods based on CNN have been proposed, these general-purpose de-blurring methods are not designed for the AVM image. (1) Since the blur level in the AVM image is region-dependent, deblurring for the AVM should also be region-dependent. (2) Furthermore, while supervised deblurring methods require a pair of input-blurred and output-deblurred images, it is not easy to collect the deblurred AVM image. This paper proposes a method for generating the pairs of training images that cope with the aforementioned two problems. These training images are generated by the inverse transformation of the AVM image generation process. Experimental results show that our method can suppress blur on AVM images. We also confirmed that even a very shallow CNN with the inference time of 2.1ms has the same performance as the SoTA model.
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基于监督去模糊的合成图像学习提高AVM图像质量
环视监控(AVM)系统被广泛用于让驾驶员观察汽车周围的情况。AVM图像是对安装在车上的广角摄像头拍摄的图像进行图像畸变校正和视点变换生成的。然而,由于这些变换,AVM图像是模糊的。这种模糊影响了司机的视野。虽然已经提出了许多基于CNN的去模糊方法,但这些通用的去模糊方法并不是针对AVM图像设计的。(1)由于AVM图像的模糊程度是区域相关的,因此AVM的去模糊也应该是区域相关的。(2)此外,监督去模糊方法需要一对输入模糊和输出去模糊的图像,而去模糊的AVM图像不容易收集。针对上述两个问题,本文提出了一种生成训练图像对的方法。这些训练图像是通过AVM图像生成过程的逆变换生成的。实验结果表明,该方法可以有效抑制AVM图像的模糊。我们还证实,即使是一个非常浅的CNN,其推理时间为2.1ms,也具有与SoTA模型相同的性能。
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