场景识别中的特征工程与深度学习:简要调查

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING International Journal of Image and Graphics Pub Date : 2024-04-09 DOI:10.1142/s0219467825500548
Seba Susan, Maduri Tuteja
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引用次数: 0

摘要

场景识别是一项重要的计算机视觉任务,它是从对生物视觉系统的研究中发展而来的。其应用范围包括视频监控、自动驾驶系统和机器人技术。早期的工作基于特征工程,涉及全局和局部图像描述符的计算和聚合。一些流行的图像特征,如 SIFT、SURF、HOG、ORB、LBP、KAZE 等已被提出并成功应用于这项任务。特征既可以从全局范围内的整个图像中计算得出,也可以从局部子区域中提取,然后汇总到整个图像中。采用合适的分类器模型来学习对这些特征进行分类。这篇综述论文分析了过去几十年来应用于场景识别任务的几种手工制作的特征,并追踪了从传统特征工程到深度学习的过渡,深度学习构成了当前计算机视觉领域的技术水平。在一些计算机视觉应用中,深度学习现已被认为超越了特征工程。深度卷积神经网络和视觉转换器是当前物体识别的最先进技术。然而,城市景观中的场景必然包含类似的物体,这对场景识别的深度学习解决方案提出了挑战。在我们的研究中,对场景识别的特征工程和深度学习方法进行了批判性分析,并介绍了基准场景数据集的结果,最后讨论了可能促进更准确场景识别的挑战和可能的解决方案。
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Feature Engineering Versus Deep Learning for Scene Recognition: A Brief Survey
Scene recognition is an important computer vision task that has evolved from the study of the biological visual system. Its applications range from video surveillance, autopilot systems, to robotics. The early works were based on feature engineering that involved the computation and aggregation of global and local image descriptors. Several popular image features such as SIFT, SURF, HOG, ORB, LBP, KAZE, etc. have been proposed and applied to the task with successful results. Features can be either computed from the entire image on a global scale, or extracted from local sub-regions and aggregated across the image. Suitable classifier models are deployed that learn to classify these features. This review paper analyzes several of these handcrafted features that have been applied to the scene recognition task over the past decades, and tracks the transition from the traditional feature engineering to deep learning which forms the current state of the art in computer vision. Deep learning is now deemed to have overtaken feature engineering in several computer vision applications. Deep convolutional neural networks and vision transformers are the current state of the art for object recognition. However, scenes from urban landscapes are bound to contain similar objects posing a challenge to deep learning solutions for scene recognition. In our study, a critical analysis of feature engineering and deep learning methodologies for scene recognition is provided, and results on benchmark scene datasets are presented, concluding with a discussion on challenges and possible solutions that may facilitate more accurate scene recognition.
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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