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首页> 外文期刊>International Journal of Computers & Applications >A novel resolution independent gradient edge predictor for lossless compression of medical image sequences
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A novel resolution independent gradient edge predictor for lossless compression of medical image sequences

机译:一种新的分辨率独立梯度边缘预测因子,用于医学图像序列的无损压缩

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摘要

Digital visualization of human body in terms of medical images with high resolution and bit depth generates tremendous amount of data. In the field of medical diagnosis, lossless compression technique is preferred that facilitates efficient archiving and transmission of medical images avoiding false diagnosis. Among various approaches to lossless compression of medical images, predictive coding techniques have high coding efficiency and low complexity. Gradient Edge Detector (GED) used in predictive coding is based on threshold value for prediction and choice of threshold is very important for efficient prediction. However, no specific method is adopted in the literature for threshold value selection. This paper presents an efficient prediction solution targeted at lossless compression of 8 bits and higher bit depth volumetric medical images up to 16 bits. Novelty of the proposed technique is developing Resolution Independent Gradient Edge Predictor (RIGED) algorithm to support 8-and 16-bit depth medical images. Percentage improvement of the proposed model is 30.39% over state-of-the-art Median Edge Detector (MED) and 0.92% over Gradient Adaptive Predictor (GAP) in terms of entropy for medical image dataset of different modalities having different resolutions and bit depths.
机译:人体在具有高分辨率和比特深度的医学图像方面的数字可视化产生了大量的数据。在医学诊断领域,优选无损压缩技术,便于避免虚假诊断的医学图像的有效归档和传输。在无损压缩医学图像的各种方法中,预测编码技术具有高编码效率和低复杂性。用于预测编码的梯度边缘检测器(GED)基于预测的阈值,并且阈值的选择对于有效预测非常重要。然而,文献中没有采用特定方法进行阈值选择。本文介绍了一个有效的预测解决方案,以8位的无损压缩,高达16位的较高位深度体积医学图像。提出的技术的新颖性是开发分辨率独立的梯度边缘预测器(Riged)算法,以支持8和16位深度医学图像。拟议模型的百分比改善在最先进的中间边缘检测器(MED)上为30.39%,在具有不同分辨率和比特深度的不同模式的医学图像数据集的熵中,在梯度自适应预测器(GAP)上的0.92% 。

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