The paper presents a deep learning-based method for vehicle classification and license plate detection, leveraging convolutional neural networks (CNNs) and Tesseract-OCR technology. The approach combines training and testing datasets to achieve an impressive accuracy of 97.32% in identifying vehicle types and license plates, while addressing limitations of traditional detection methods. Additionally, the study outlines potential improvements for the algorithm and discusses future directions in machine learning and artificial intelligence within the context of vehicle detection.