Object Detectors’ Convolutional Neural Networks backbones : a review and a comparative study
Journal: International Journal of Emerging Trends in Engineering Research (IJETER) (Vol.9, No. 11)Publication Date: 2021-11-10
Authors : Sara Bouraya; Abdessamad Belangour;
Page : 1379-1386
Keywords : Object Detection; Deep Learning; Computer vision; Backbone.;
Abstract
Computer vision is a scientific field that deals with how computers can acquire significant level comprehension from computerized images or videos. One of the keystones of computer vision is object detection that aims to identify relevant features from video or image to detect objects. Backbone is the first stage in object detection algorithms that play a crucial role in object detection. Object detectors are usually provided with backbone networks designed for image classification. Object detection performance is highly based on features extracted by backbones, for instance, by simply replacing a backbone with its extended version, a large accuracy metric grows up. Additionally, the backbone's importance is demonstrated by its efficiency in real-time object detection. In this paper, we aim to accumulate the crucial role of the deep learning era and convolutional neural networks in particular in object detection tasks. We have analyzed and have been concentrating on a wide range of reviews on convolutional neural networks used as the backbone of object detection models. Building, therefore, a review of backbones that help researchers and scientists to use it as a guideline for their works.
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Last modified: 2021-11-11 00:22:08