Analysis of deep learning frameworks for object detection in motion

G. Vaishnavi, Shriya Varada Ramesh, Sanjana Satheesh, Ashwini Kodipalli, Kusuma Thimmaraju
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引用次数: 10

Abstract

Object detection and recognition is a computer vision technology and is considered as one of the challenging tasks in the field of computer vision. Many approaches for detection have been proposed in the past. AIM: This paper is mainly aiming to discuss the existing detection and classification techniques of Deep Convolutional Neural Networks (CNN) with an importance placed on highlighting the training and accuracy of the different CNN models. METHODS: In the proposed work, Faster RCNN, YOLO and SSD are used to detect helmets. OUTCOME: The survey says MobileNets has higher accuracy when compared to VGG16, VGG19 and Inception V3 and is therefore chosen to be used with SSD. The impact of the differences in the amount of training of each algorithm is highlighted which helps understand the advantages and disadvantages of each algorithm and deduce the most suitable.
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运动中物体检测的深度学习框架分析
目标检测与识别是一种计算机视觉技术,被认为是计算机视觉领域最具挑战性的课题之一。过去已经提出了许多检测方法。目的:本文主要讨论了深度卷积神经网络(CNN)现有的检测和分类技术,重点强调了不同CNN模型的训练和准确性。方法:采用Faster RCNN、YOLO和SSD三种方法检测头盔。结果:调查显示,与VGG16、VGG19和Inception V3相比,MobileNets具有更高的准确性,因此选择与SSD一起使用。强调了每种算法训练量差异的影响,这有助于了解每种算法的优缺点,并推断出最适合的算法。
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