A Review on Traditional and Deep Learning based Object Detection Methods

B. Solunke, S. Gengaje
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Abstract

Fast and accurate object detection systems are in high demand due to the advent of autonomous vehicles, smart video surveillance, facial detection, and numerous people counting applications. These systems not only detect and classify every object in an image or video, but also locate each one by creating a bounding box around it. This paper analyses the traditional and recent deep learning-based object detection methods from different perspectives, incorporating features recognition on many scales, data expansion, training approach, and perspective detection, in order to make it easier to deeply understand object detection. Some commonly used standard datasets for object detection are discussed. It also addressed the challenges and possible research scope in the future from the perspective of evolving object detection datasets and the framework for object detection tasks. From the analysis, it is observed that the performance of the methods in use for object detection is moderate and requires improvement, especially in difficult environments such as large object scale variance, obstructed object view, and horrific mild prerequisites. Therefore, the possible research scope for inventions and implementation of more novel deep learning methods to enhance object detection and classification accuracy is discussed.
基于传统和深度学习的目标检测方法综述
由于自动驾驶汽车、智能视频监控、面部检测和大量人员计数应用的出现,对快速准确的目标检测系统的需求很高。这些系统不仅可以检测和分类图像或视频中的每个物体,还可以通过在其周围创建一个边界框来定位每个物体。本文从多尺度特征识别、数据扩展、训练方法和视角检测等方面,从不同角度分析了基于深度学习的传统和最新目标检测方法,使目标检测更易于深入理解。讨论了一些常用的目标检测标准数据集。从不断发展的目标检测数据集和目标检测任务框架的角度,讨论了未来的挑战和可能的研究范围。从分析中可以看出,所使用的目标检测方法的性能一般,需要改进,特别是在困难的环境中,如物体尺度变化大,物体视图受阻,以及可怕的温和先决条件。因此,讨论了发明和实施更多新颖的深度学习方法以提高目标检测和分类精度的可能研究范围。
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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