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arxiv: 2209.07943 · v1 · pith:NKUKP5ES · submitted 2022-09-16 · cs.CV · cs.AI

Traffic Congestion Prediction using Deep Convolutional Neural Networks: A Color-coding Approach

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classification cs.CV cs.AI
keywords trafficdataconvolutionaldatasetdeepneuralvideobinary
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The traffic video data has become a critical factor in confining the state of traffic congestion due to the recent advancements in computer vision. This work proposes a unique technique for traffic video classification using a color-coding scheme before training the traffic data in a Deep convolutional neural network. At first, the video data is transformed into an imagery data set; then, the vehicle detection is performed using the You Only Look Once algorithm. A color-coded scheme has been adopted to transform the imagery dataset into a binary image dataset. These binary images are fed to a Deep Convolutional Neural Network. Using the UCSD dataset, we have obtained a classification accuracy of 98.2%.

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