Dissecting of the two-stages object detection models architecture and performance

Sara Bouraya, A. Belangour
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Abstract

Artificial intelligence (AI) is the discipline focused on enabling computers to operate autonomously without explicit programming. Within AI, computer vision is an emerging field tasked with endowing machines with the ability to interpret visual data from images and videos. Over recent decades, computer vision has found applications in diverse fields such as autonomous vehicles, information retrieval, surveillance, and understanding human behavior. Object detection, a key aspect of computer vision, employs deep neural networks to continually advance detection accuracy and speed. Its goal is to precisely identify objects within images or videos and assign them to specific classes. Object detection models typically consist of three components: a backbone network for feature extraction, a neck model for feature aggregation, and a head for prediction. The focus of this study lies on two stage detectors. This study aims to provide a comprehensive review of two stage detectors in object detection, followed by benchmarking to offer insights for researchers and scientists. By analyzing and understanding the efficacy of these models, this research seeks to guide future developments in the field of object detection within computer vision.
剖析两阶段物体检测模型的结构和性能
人工智能(AI)是一门专注于使计算机无需明确编程即可自主运行的学科。在人工智能中,计算机视觉是一个新兴领域,其任务是赋予机器从图像和视频中解读视觉数据的能力。近几十年来,计算机视觉已应用于自动驾驶汽车、信息检索、监控和理解人类行为等多个领域。物体检测是计算机视觉的一个重要方面,它利用深度神经网络不断提高检测精度和速度。其目标是精确识别图像或视频中的物体,并将它们归入特定类别。物体检测模型通常由三个部分组成:用于特征提取的骨干网络、用于特征聚合的颈部模型和用于预测的头部模型。本研究的重点在于两级检测器。本研究旨在对物体检测中的两级检测器进行全面评述,然后进行基准测试,为研究人员和科学家提供见解。通过分析和了解这些模型的功效,本研究旨在为计算机视觉中物体检测领域的未来发展提供指导。
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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