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A New Laws Filtered Local Binary Pattern Texture Descriptor for Ultrasound Kidney Images Retrieval

机译:肾脏肾脏图像检索的新法滤波局部二值模式纹理描述符

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Content Based Image Retrieval (CBIR) is an inevitable technique in medical applications. One of the important tasks in CBIR is the feature extraction process. A new feature extraction procedure called Laws Filtered Local Binary Pattern (LFLBP) for extracting texture features from ultrasound kidney images is proposed in this manuscript. This new texture feature combines the gain of Laws Masks and Local Binary Pattern (LBP). The Laws Masks enhance the discrimination power of LBP by capturing high energy texture points in an image and efficiently characterize the textures. The new descriptor is intended to utilize the local information in an effective manner neither the increase of encoding levels nor the usage of adjacent neighbourhood information. The performance of this new descriptor is compared with the LBP and the Local Ternary Pattern (LTP). The experimental results show that the ultrasound kidney images retrieval system with this new descriptor has good average precision value (77%) as compared to LBP (74%) and LTP (74.3%).
机译:基于内容的图像检索(CBIR)是医疗应用中的一项不可避免的技术。 CBIR中的重要任务之一是特征提取过程。本文提出了一种新的特征提取程序,称为“法则滤波局部二值模式”(LFLBP),用于从超声肾脏图像中提取纹理特征。这个新的纹理功能结合了Laws Masks和Local Binary Binary Pattern(LBP)的增益。 Laws遮罩通过捕获图像中的高能量纹理点并有效地表征纹理来增强LBP的辨别能力。新描述符旨在以有效的方式利用本地信息,而不是增加编码级别,也不使用相邻邻域信息。将该新描述符的性能与LBP和本地三进制模式(LTP)进行比较。实验结果表明,与LBP(74%)和LTP(74.3%)相比,具有这种新描述符的超声肾脏图像检索系统具有良好的平均精度值(77%)。

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