MRCNet: Multi-Level Residual Connectivity Network for Image Classification

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Mengting Ye, Zhenxue Chen, Yixin Guo, Kaili Yu, Longcheng Liu
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引用次数: 0

Abstract

Computer vision obtains object and environment information by simulating human visual senses and borrowing human sensory activity. As one of the main tasks of computer vision, image classification can be used not only for face recognition, traffic scene recognition, image retrieval, and automatic photo categorization but also as a theoretical basis for target detection and image segmentation. In this paper, we use the existing CNN architecture network-ConvNeXt. By adapting and modifying the residual connectivity and convolutional structure of the network, we achieve a balance between classification accuracy and inference speed. These modifications are able to reduce both computation and memory consumption while keeping accuracy largely unchanged, thus better facilitating network lightweighting.
MRCNet:用于图像分类的多级残差连接网络
计算机视觉通过模拟人的视觉感官和借用人的感官活动来获取物体和环境信息。作为计算机视觉的主要任务之一,图像分类不仅可用于人脸识别、交通场景识别、图像检索和照片自动分类,还可作为目标检测和图像分割的理论基础。本文使用现有的 CNN 架构网络--ConvNeXt。通过调整和修改网络的残差连接和卷积结构,我们实现了分类准确性和推理速度之间的平衡。这些修改能够在保持准确性基本不变的情况下减少计算量和内存消耗,从而更好地促进网络轻量化。
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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