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Comparison of different feature extraction techniques in content-based image retrieval for CT brain images

机译:基于内容的图像检索在CT脑图像中的不同特征提取技术的比较

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Content-based image retrieval (CBIR) system helps users retrieve relevant images based on their contents. A reliable content-based feature extraction technique is therefore required to effectively extract most of the information from the images. These important elements include texture, colour, intensity or shape of the object inside an image. CBIR, when used in medical applications, can help medical experts in their diagnosis such as retrieving similar kind of disease and patient’s progress monitoring. In this paper, several feature extraction techniques are explored to see their effectiveness in retrieving medical images. The techniques are Gabor Transform, Discrete Wavelet Frame, Hu Moment Invariants, Fourier Descriptor, Gray Level Histogram and Gray Level Coherence Vector. Experiments are conducted on 3,032 CT images of human brain and promising results are reported.
机译:基于内容的图像检索(CBIR)系统可帮助用户根据其内容检索相关图像。因此,需要可靠的基于内容的特征提取技术来有效地从图像中提取大多数信息。这些重要元素包括图像内的物体的纹理,颜色,强度或形状。 CBIR,当用于医疗应用时,可以帮助医学专家在诊断中,例如检索类似类型的疾病和患者的进展监测。在本文中,探讨了几种特征提取技术,以便在检索医学图像方面看到它们的有效性。该技术是Gabor变换,离散小波帧,胡时刻不变,傅里叶描述符,灰度直方图和灰度相干矢量。在3,032张人脑的图像上进行实验,并报告了有希望的结果。

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