A Survey on Various Available Object Detection Models and Application In Automatic License Plate Detection

Aditya Kulkarni, Manali Munot, Sai Salunkhe, Shubham Mhaske, Nilesh B. Korade
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引用次数: 0

Abstract

With the development in technologies right from serial to parallel computing, GPU, AI, and deep learning models a series of tools to process complex images have been developed. The main focus of this research is to compare various algorithms(pre-trained models) and their contributions to process complex images in terms of performance, accuracy, time, and their limitations. The pre-trained models we are using are CNN, R-CNN, R-FCN, and YOLO. These models are python language-based and use libraries like TensorFlow, OpenCV, and free image databases (Microsoft COCO and PAS-CAL VOC 2007/2012). These not only aim at object detection but also on building bounding boxes around appropriate locations. Thus, by this review, we get a better vision of these models and their performance and a good idea of which models are ideal for various situations.
现有各种目标检测模型及其在车牌自动检测中的应用综述
随着从串行到并行计算、GPU、人工智能和深度学习模型等技术的发展,一系列处理复杂图像的工具已经开发出来。本研究的主要重点是比较各种算法(预训练模型)及其在处理复杂图像方面的性能、准确性、时间和局限性。我们使用的预训练模型是CNN、R-CNN、R-FCN和YOLO。这些模型基于python语言,使用TensorFlow、OpenCV等库和免费图像数据库(Microsoft COCO和PAS-CAL VOC 2007/2012)。这些不仅针对目标检测,还针对在适当位置周围构建边界框。因此,通过这次回顾,我们对这些模型及其性能有了更好的了解,并对哪些模型适合各种情况有了一个很好的想法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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