Reliable automatic classification of colonoscopy images is of great significance in assessing the stage of colonic lesions and formulating appropriate treatment plans. However, it is challenging due to uneven brightness, location variability, inter-class similarity, and intra-class dissimilarity, affecting the classification accuracy. To address the above issues, we propose a Fourier-based Frequency Complex Network (FFCNet) for colon disease classification in this study. Specifically, FFCNet is a novel complex network that enables the combination of complex convolutional networks with frequency learning to overcome the loss of phase information caused by real convolution operations. Also, our Fourier transform transfers the average brightness of an image to a point in the spectrum (the DC component), alleviating the effects of uneven brightness by decoupling image content and brightness. Moreover, the image patch scrambling module in FFCNet generates random local spectral blocks, empowering the network to learn long-range and local diseasespecific features and improving the discriminative ability of hard samples. We evaluated the proposed FFCNet on an in-house dataset with 2568 colonoscopy images, showing our method achieves high performance outperforming previous state-of-the art methods with an accuracy of 86:35% and an accuracy of 4.46% higher than the backbone. The project page with code is available at https://github.com/soleilssss/FFCNet.
翻译:在评估结肠镜图像的阶段和制定适当的治疗计划方面,可靠的结肠镜图像自动可靠分类非常重要;然而,由于亮度不均、地点变异、阶级间相似性和阶级内部差异性,影响分类准确性,因此具有挑战性;为了解决上述问题,我们提议在本研究中为结肠疾病分类建立一个基于Forier的基于Forier的频率复合网络(FFCNet)。具体地说,FFFCNet是一个新的复杂网络,它使复杂的共变网络组合在一起,经常学习,以克服因真实混杂作业而丢失的阶段信息。此外,我们的Fourier将图像的平均亮度转换为频谱点(DC部分),通过脱钩图像内容和亮度来减轻不均亮性的影响。此外,FFFCNet的图像拼凑组合模块生成随机的本地光谱块,使网络能够学习远程和局部疾病特性,并提高硬样本的鉴别能力。我们评估了以2568个结肠/CN镜图像组成的内部数据集的FFFCNet提议,将图像转换成一个2568的光谱/CN图像转换为频段(DC组件组成部分),通过解图解图解图解图解图解图解图解图解图像,以显示86的准确度的准确度为86的版本,显示的逻辑/FFFFCFCFCFCFCFCFF35的系统,显示的精度比标准,显示基础图的精度为86的精度为86的精度,显示的精度比标准。