The success of CNN-based architecture on image classification in learning and extracting features made them so popular these days, but the task of image classification becomes more challenging when we apply state of art models to classify noisy and low-quality images. It is still difficult for models to extract meaningful features from this type of image due to its low-resolution and the lack of meaningful global features. Moreover, high-resolution images need more layers to train which means they take more time and computational power to train. Our method also addresses the problem of vanishing gradients as the layers become deeper in deep neural networks that we mentioned earlier. In order to address all these issues, we developed a novel image classification architecture, composed of blocks that are designed to learn both low level and global features from blurred and noisy low-resolution images. Our design of the blocks was heavily influenced by Residual Connections and Inception modules in order to increase performance and reduce parameter sizes. We also assess our work using the MNIST family datasets, with a particular emphasis on the Oracle-MNIST dataset, which is the most difficult to classify due to its low-quality and noisy images. We have performed in-depth tests that demonstrate the presented architecture is faster and more accurate than existing cutting-edge convolutional neural networks. Furthermore, due to the unique properties of our model, it can produce a better result with fewer parameters.
翻译:以CNN为基础的图像分类架构在学习和提取特征方面的成功使得这些特征在学习和提取过程中非常受欢迎,但是,当我们应用最新状态模型对噪音和低质量图像进行分类时,图像分类的任务就变得更加艰巨。由于这种图像的分辨率低,缺乏有意义的全球特征,模型仍然难以从这类图像中提取有意义的特征。此外,高分辨率图像需要更多层来培训,这意味着它们需要更多的时间和计算能力来培训。我们的方法还解决了随着层层在我们前面提到的深层神经网络中越深而消失的梯子的问题。为了解决这些问题,我们开发了一个新的图像分类结构,由设计来从模糊和低分辨率图像中学习低水平和全球特征的块块组成。我们设计这些块的设计在很大程度上受到残余连接和感知模块的影响,以便提高性能和降低参数大小。我们还利用MNIST家庭数据集评估了我们的工作,特别侧重于Oracle-MNIST数据集,由于其低质量和焦亮度参数而最难以分类。我们通过更精确的升级的网络进行更先进的测试,从而可以更准确地显示我们现有的革命性结构。