An Evolution of CNN Object Classifiers on Low-Resolution Images

Muhammad Mohsin Kabir, Abu Quwsar Ohi, Md. Saifur Rahman, M. Mridha
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引用次数: 4

Abstract

Object classification is a significant task in computer vision. It has become an effective research area as an important aspect of image processing and the building block of image localization, detection, and scene parsing. Object classification from low-quality images is difficult for the variance of object colors, aspect ratios, and cluttered backgrounds. The field of object classification has seen remarkable advancements, with the development of deep convolutional neural networks (DCNNs). Deep neural networks have been demonstrated as very powerful systems for facing the challenge of object classification from high-resolution images, but deploying such object classification networks on the embedded device remains challenging due to the high computational and memory requirements. Using high-quality images often causes high computational and memory complexity, whereas low-quality images can solve this issue. Hence, in this paper, we investigate an optimal architecture that accurately classifies low-quality images using DCNNs architectures. To validate different baselines on low-quality images, we perform experiments using webcam captured image datasets of 10 different objects. In this research work, we evaluate the proposed architecture by implementing popular CNN architectures. The experimental results validate that the MobileNet architecture delivers better than most of the available CNN architectures for low-resolution webcam image datasets.
CNN对象分类器在低分辨率图像上的进化
目标分类是计算机视觉中的一项重要任务。它作为图像处理的一个重要方面和图像定位、检测和场景解析的基石,已经成为一个有效的研究领域。由于物体颜色、长宽比和杂乱背景的变化,从低质量图像中分类物体是困难的。随着深度卷积神经网络(DCNNs)的发展,目标分类领域取得了显著的进步。深度神经网络已经被证明是一种非常强大的系统,可以面对来自高分辨率图像的目标分类挑战,但由于对计算和内存的高要求,在嵌入式设备上部署这种目标分类网络仍然具有挑战性。使用高质量的图像通常会导致较高的计算和内存复杂性,而低质量的图像可以解决这个问题。因此,在本文中,我们研究了一种使用DCNNs架构准确分类低质量图像的最佳架构。为了验证低质量图像的不同基线,我们使用网络摄像头捕获的10个不同对象的图像数据集进行实验。在这项研究工作中,我们通过实现流行的CNN架构来评估所提出的架构。实验结果验证了MobileNet架构比大多数可用的CNN架构在低分辨率网络摄像头图像数据集上提供更好的性能。
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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