Number Plate Detection in Fog and Haze
Abstract
The technique of vehicle license plate recognition
can recognize and count the vehicles automatically, and thus many applications regarding the vehicles are greatly
facilitated. The paper proposes the use of the Faster Regions with convolutional neural network to detect the number plate in the vehicle from the surveillance camera which is placed on the traffic areas. However, the recognition of vehicle license plates are extremely difficult especially in some fog haze environments because the fog and haze blur the boundaries and characters of license plates significantly, which makes the license plates hard to be detected or recognized . This paper proposes a vehicle License Plate Recognition method for Fog-Haze environments. A dark channel prior algorithm based on the local estimation of atmospheric light value is applied to dehaze the blurred images preliminarily . Then, the images are further dehazed, and the license plate regions are detected through a Joint Further-dehazing and Region-extracting Model on basis of an object detection convolution neural network. Finally, the image super-resolution is accomplished with a convolution enhanced super-resolution convolutional neural network, and hence the characters of license plates can be recognized successfully
Keywords:
R-CNN, De-hazing, LPRPublished
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