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Vehicle Detection through Instance Segmentation using Mask R-CNN for Intelligent Vehicle System

机译:用于智能车辆系统的掩模R-CNN实例分割的车辆检测

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The recent advancement in artificial intelligence approach or deep learning techniques explored the ways to facilitate automation in various sectors. The application of deep learning with computer vision field has resulted in realization of intelligent systems. Vehicle detection plays a key role in Intelligent Vehicle System and Intelligent Transport System as it assists critical components of these systems like road scene classification, detecting obstacle vehicles to find an unhindered pathway, and even preventing accidents. This paper presents an implementation of Mask R-CNN state-of-the-art method using transfer learning technique for vehicle detection via instance wise segmentation which produces bounding box and object mask simultaneously. As the autonomous systems demands precise and flawless identification of the vehicles thus segmentation based approach is adopted. The model performs satisfactorily for occluded and small sized objects as well. This study is accomplished using an online GPU and cloud services provided by Google Colab by using Tensorflow and Keras framework. A mAP of 90.27% and mAR of 92.38% is achieved by using a combination of benchmark datasets.
机译:最近人工智能方法或深度学习技术的进步探讨了促进各个部门自动化的方法。深度学习与计算机视觉领域的应用导致了智能系统的实现。车辆检测在智能车辆系统和智能运输系统中起着关键作用,因为它有助于这些系统的关键部件,如道路场景分类,检测障碍物以找到一个不受阻碍的途径,甚至防止事故。本文介绍了通过同时产生边界框和物体掩模的实例明智分割的车辆检测的传输学习技术,呈现掩模R-CNN最新方法的实施。随着自主系统所要求的基于分段的方法,随着自主系统要求的精确和完美的识别,因此采用了基于分段的方法。该模型对封闭和小型物体也令人满意地表现出令人满意的。本研究是使用Google Colab提供的在线GPU和云服务通过使用TensorFlow和Keras Framework来完成。通过使用基准数据集的组合实现了90.27%和90.38%的地图。

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