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A Review on Semantic Segmentation from a Modern Perspective

机译:现代视角下的语义分割研究述评

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Among various vibrant areas of research in computer vision, scene understanding is the one, which has garnered exceptional attention from the research community. This increased popularity should be credited to the accelerated research in deep learning techniques, mainly during the last decade. In scene understanding, one important step is semantic segmentation where the goal is to give each pixel of an image a proper object category label so that each object gets properly delineated. This technique is also known as scene parsing. One major challenge in this task is that it combines the problem of object detection, image segmentation and multi-class recognition. It encompasses a wide variety of practical applications such as autonomous driving, indoor navigation, virtual/augmented reality etc. This paper gives a review on semantic segmentation from a modern perspective by giving a special attention to deep learning based scene parsing methods. In this review, we take up two central issues of semantic segmentation-accuracy (labeling quality) and efficiency (inference speed) to comparatively study the performance of existing methods. We also present the performance results of various methods both in terms of accuracy and efficiency and compare them based on the key strategies employed in the frameworks.
机译:在计算机视觉研究的各个活跃领域中,场景理解是其中之一,它引起了研究界的极大关注。这种日益普及的现象应归功于深度学习技术的加速研究,主要是在最近十年中。在场景理解中,重要的一步是语义分割,其目的是为图像的每个像素赋予适当的对象类别标签,以便正确地描绘每个对象。此技术也称为场景解析。该任务的主要挑战是它将目标检测,图像分割和多类别识别的问题结合在一起。它涵盖了各种各样的实际应用,例如自动驾驶,室内导航,虚拟/增强现实等。本文通过特别关注基于深度学习的场景解析方法,从现代的角度对语义分割进行了回顾。在这篇综述中,我们讨论了语义分割准确性(标签质量)和效率(推理速度)这两个主要问题,以比较研究现有方法的性能。我们还从准确性和效率方面介绍了各种方法的性能结果,并根据框架中采用的关键策略对它们进行了比较。

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