DIFFERENT APPLICATION AREAS OF OBJECT DETECTION WITH DEEP LEARNING

Sevcan Turan, Bahar Milani, Feyzullah Temurtaş
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引用次数: 1

Abstract

: Automation is spread in all daily life and business activities to facilitate human life and working conditions. Robots, automated cars, unmanned vehicles, robot arms, automated factories etc. are getting place in our lives. For these automated actors, one important task is recognizing objects and obstacles in the target environment. Object detection, determining the objects and their location in the environment, is one of the most important solution for this task. With deep learning techniques like Convolutional Neural Network and GPU processing, object detection has become more accurate and faster, and getting attention of researchers. In recent years, many articles about object detection algorithms and usage of object detection have been published. There are surveys about the object detection algorithms, but they have introduced algorithms and focused on common application areas. With this survey, we aim to show that object detection algorithms have very large and different application area. In this study, we have given a brief introduction to deep learning. We have then focused on standard object detection algorithms based on deep learning and their applications in different research areas in recent years to give an idea for future works. Also, the datasets and evaluation metrics used in the research are listed.
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目标检测与深度学习的不同应用领域
自动化普及于日常生活和商业活动中,以方便人类的生活和工作条件。机器人、自动驾驶汽车、无人驾驶汽车、机械臂、自动化工厂等正在进入我们的生活。对于这些自动化参与者,一个重要的任务是识别目标环境中的物体和障碍物。目标检测,确定目标及其在环境中的位置,是该任务最重要的解决方案之一。随着卷积神经网络和GPU处理等深度学习技术的发展,目标检测变得更加准确和快速,并受到研究人员的关注。近年来,发表了许多关于目标检测算法和目标检测应用的文章。有关于目标检测算法的调查,但他们已经介绍了算法,并专注于常见的应用领域。通过这一调查,我们旨在表明目标检测算法具有非常大且不同的应用领域。在本研究中,我们简要介绍了深度学习。然后,我们专注于基于深度学习的标准目标检测算法及其近年来在不同研究领域的应用,为未来的工作提供思路。此外,还列出了研究中使用的数据集和评估指标。
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