Vision-based traffic sign compliance evaluation using convolutional neural network

Manual monitoring of road signs compliance procedures are adapted by developing countries. As effective as this method is, the amount of time and funds needed to cover a large area is quite alarming. Thus, a need for a vision — based traffic sign detection and recognition system. However, while a majority of researches using machine vision focuses on the development of a robust real — time traffic sign recognition system, researches addressing the issue of the sign compliance and standardization is lacking.

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