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Vehicle Distance Detection Using Monocular Vision and Machine Learning

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Figure

Table 1.1: Society of Automotive Engineers (SAE) Automation Levels [1]
Table 2.3: Pros and Cons of Each Class of License Plate Extraction Methods [27]
Table 2.6: Comparison Between Vehicle and License Plate Detection
Table 2.7a: Summary of Related Works
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