Short Literature Review for Visual Scene Understanding

S. Achirei
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Abstract

Abstract Individuals are highly accurate for visually understanding natural scenes. By extracting and extrapolating data we reach the highest stage of scene understanding. In the past few years it proved to be an essential part in computer vision applications. It goes further than object detection by bringing machine perceiving closer to the human one: integrates meaningful information and extracts semantic relationships and patterns. Researchers in computer vision focused on scene understanding algorithms, the aim being to obtain semantic knowledge from the environment and determine the properties of objects and the relations between them. For applications in robotics, gaming, assisted living, augmented reality, etc a fundamental task is to be aware of spatial position and capture depth information. First part of this paper focuses on deep learning solutions for scene recognition following the main leads: low-level features and object detection. In the second part we present extensively the most relevant datasets for visual scene understanding. We take into consideration both directions having in mind future applications.
视觉场景理解的简短文献综述
个体在视觉上对自然场景的理解是高度准确的。通过提取和外推数据,我们达到了场景理解的最高阶段。在过去的几年里,它被证明是计算机视觉应用中必不可少的一部分。它比物体检测更进一步,使机器感知更接近人类:整合有意义的信息,提取语义关系和模式。计算机视觉的研究重点是场景理解算法,目的是从环境中获取语义知识,确定物体的属性和它们之间的关系。在机器人,游戏,辅助生活,增强现实等应用中,一个基本任务是意识到空间位置并捕获深度信息。本文的第一部分重点介绍了场景识别的深度学习解决方案,主要包括:底层特征和目标检测。在第二部分中,我们广泛地介绍了视觉场景理解中最相关的数据集。考虑到未来的应用,我们考虑了两个方向。
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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