Convolution Neural Networks: A Comparative Study for Image Classification

Narayana Darapaneni, B. Krishnamurthy, A. Paduri
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引用次数: 9

Abstract

Wide range of convolution neural network architectures are available for image classification, segmentation and object detection. Most of the architecture focus on accuracy as primary factor for implementation. However, when it comes to real time application deployment, there are other primary factors like memory and performance which is equally important. Also, each CNN architecture showcases its advantages and limitations but comparison over their peers are not equally considered. The goal of this paper is to provide a comparative study of various CNN architecture for image classification and serve as a guide for selection based on applications requirement and hardware capabilities. In this paper, we discuss about 18 different CNN state of art architectures that are widely used. In order to access model suitability for a given problem, CIFAR-10 image dataset is trained on different architectures with a specified set of hyper-parameters to measure the accuracy, performance and memory consumption. The experiment findings are presented to suggest suitable CNN architecture based on application/hardware attributes.
卷积神经网络:图像分类的比较研究
广泛的卷积神经网络架构可用于图像分类,分割和目标检测。大多数体系结构都把准确性作为实现的主要因素。然而,当涉及到实时应用程序部署时,还有其他主要因素(如内存和性能)同样重要。此外,每个CNN架构都展示了它的优点和局限性,但与同行的比较并没有得到平等的考虑。本文的目的是对各种用于图像分类的CNN架构进行比较研究,并根据应用需求和硬件能力进行选择。在本文中,我们讨论了广泛使用的18种不同的CNN体系结构。为了访问模型对给定问题的适用性,CIFAR-10图像数据集在不同的架构上进行训练,并使用一组指定的超参数来测量准确性、性能和内存消耗。实验结果提出了基于应用/硬件属性的合适的CNN架构。
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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