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Auxiliary Pathological Analysis Based on Classification and Recognition of Electronic Gastroscope Images

机译:基于电子胃镜图像分类识别的辅助病理分析

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In this paper, a computer-aided lesion detection method based on gastroscope image is proposed to improve the efficiency and accuracy of conventional gastroscopy. Considering that the mainstream image processing algorithms are not suitable for the region extraction of gastroscope image, this paper adopts a simpler and faster color feature extraction method with the characteristics of large changes between pixels. At the same time, a variety of feature combinations are used to replace the single feature, and the two-level series classifier is used to perform the de-interference and lesion detection steps in series. Finally, the design and implementation of gastroscope pathology auxiliary recognition system is completed in the relevant test. The results show that the recognition method based on classification detection is significantly better than the traditional machine learning classification method in the classification and recognition of precancerous diseases, and it has a significant improvement in accuracy compared with the deep learning model
机译:本文提出了一种基于胃镜图像的计算机辅助病变检测方法,以提高传统胃镜检查的效率和准确性。考虑到主流图像处理算法不适合胃镜图像的区域提取,本文采用了一种简单、快速的颜色特征提取方法,具有像素间变化大的特点。同时,使用多种特征组合替换单个特征,并使用两级串联分类器串联执行去干扰和病变检测步骤。最后,在相关测试中完成了胃镜病理学辅助识别系统的设计与实现。结果表明,基于分类检测的识别方法在癌前疾病的分类和识别方面明显优于传统的机器学习分类方法,与深度学习模型相比,其准确率有显著提高

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