一种实用的室内外场景识别检测方法

Vaishali Sharma, Nitesh Nagpal, Ankit Shandilya, Aman Dureja, Ajay Dureja
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摘要

在计算机视觉中,场景识别是一个长期研究的问题。场景可以定义为实时的环境视图,它以一种有意义的方式由许多视图(如道路、树木、建筑、公园等)组成。场景识别问题可以解释为对“道路”、“建筑物”、“大厅”、“卧室”等标签的评估,或者更简单地说,根据图像的对象或环境,在输入图像上对“室内场景”和“室外场景”进行分类。在这个不断增长的数字数据时代,每秒钟都有大量的数据产生和可用。与图像识别相比,场景识别仍然是一个新兴的领域,由于场景环境中特征的巨大可变性,它并没有取得太大的成功。由于这个原因,这些天在这个领域没有完成很多工作。这个项目的重点是利用最近完成的所有文献调查对问题陈述进行评估,并为该问题陈述提供解决方案。为了解决提出的问题声明,使用ResNet和VGG变体ResNet18, 50和152;VGG16, 19和VGG19实现批规范化。本报告讨论了整个场景识别过程,主要目的是为进一步提出新算法奠定基础。在深度学习之前,场景识别模型的设计和实现依赖于场景的低维描绘。利用深度学习尤其是CNN进行场景识别已经引起了计算机视觉界的极大关注。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Practical Approach to detect Indoor and Outdoor Scene Recognition
In computer vision recognition of scenes is a long-time research problem. Scene can be defined as the real-time environment view which consists of a lot of views (like road, tree, building, parks, etc.) in a meaningful manner. The problem of scene recognition can be explained as assessment of labels such as “road”, “building”, “hall”, “bedroom” or in an extra simplified way “Indoor scene” and “Outdoor scenes is classified on an input image based on the object or environment of the image. A huge amount of data is created and available every second in this growing era of digital data. Scene recognition is still a rising area that did not attain much success as compared to image recognition due to the vast variability of features in the scenic environment. Because of this reason, there is not a lot of work being completed these days in this area. This project focuses on the evaluation of problem statements using all the literature surveys completed lately and offering solutions for that problem statement. For resolving the proposed problem declaration ResNet and VGG variants are used ResNet18, 50 and 152 & VGG16, 19, and VGG19 with batch normalization are implemented. The entire scene recognition procedure is discussed in this report and the main motive is to form a foundation that can be further continued in proposing a new algorithm. Before deep learning the design and implementation of the scene recognition model depended on the low dimensional portrayal of the scene. The utilization of deep learning especially CNN for scene recognition has gotten extraordinary attention from the computer vision community.
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