Development of Brain MRI Image Segmentation Methods Based on Computer Vision and Deep Learning.

2023 12th International Conference on Awareness Science and Technology (iCAST)(2023)

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摘要
Brain Magnetic Resonance Imaging (MRI) is routinely utilized for observing cerebral diseases. During the diagnostic process, specialists are tasked with measuring the scope of brain lesions. However, manual measurements can be both time-consuming and imprecise. Computer vision presents a solution capable of achieving automated measurements. brain MRI images comprise the skull and brain tissues. Prior to analyzing the brain tissues, it is imperative to first separate the skull images, which then paves the way for subsequent analysis of brain tissue images. Accordingly, this study develops an image processing method for skull image separation. The method aims to retain images of both the cerebrum and cerebellum and segregates the brain MRI images into three sections based on two features. The Convolutional Neural Network YOLOv7 is employed for recognizing these two features. Specific techniques are devised to separate skull images corresponding to the two sections (containing cerebrum and cerebellum tissues) to retain the essential parts of brain images. To boost recognition accuracy, sample image training focuses on the Region of Interest (the temporal lobe and ocular tissues). Such an approach results in high recognition accuracy (average loss=0.015, mAP=0.99, Precision=0.95, Recall=0.95). Moreover, the study conducts numerous experiments to validate the method's efficacy.
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关键词
magnetic resonance imaging,computer vision,image segmentation,cerebrum,convolutional neural networks,YOLOv7
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