IVCVMay 23, 2024

Advancements in Feature Extraction Recognition of Medical Imaging Systems Through Deep Learning Technique

arXiv:2406.18549v110 citationsh-index: 82024 IEEE 2nd International Conference on Sensors, Electronics and Computer Engineering (ICSECE)
Originality Incremental advance
AI Analysis

This work addresses feature extraction in medical imaging for clinical diagnosis, but it appears incremental as it builds on existing techniques like quadtree access and kernel-based discriminant analysis.

The study tackled feature extraction in medical imaging by introducing an unsupervised method using spatial stratification and a weighted objective function for fast recognition, achieving better image segmentation results compared to traditional linear discrimination methods.

This study introduces a novel unsupervised medical image feature extraction method that employs spatial stratification techniques. An objective function based on weight is proposed to achieve the purpose of fast image recognition. The algorithm divides the pixels of the image into multiple subdomains and uses a quadtree to access the image. A technique for threshold optimization utilizing a simplex algorithm is presented. Aiming at the nonlinear characteristics of hyperspectral images, a generalized discriminant analysis algorithm based on kernel function is proposed. In this project, a hyperspectral remote sensing image is taken as the object, and we investigate its mathematical modeling, solution methods, and feature extraction techniques. It is found that different types of objects are independent of each other and compact in image processing. Compared with the traditional linear discrimination method, the result of image segmentation is better. This method can not only overcome the disadvantage of the traditional method which is easy to be affected by light, but also extract the features of the object quickly and accurately. It has important reference significance for clinical diagnosis.

Foundations

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