首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >A Block Adaptive Near-Lossless Compression Algorithm for Medical Image Sequences and Diagnostic Quality Assessment
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A Block Adaptive Near-Lossless Compression Algorithm for Medical Image Sequences and Diagnostic Quality Assessment

机译:用于医学图像序列和诊断质量评估的块自适应近无损压缩算法

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The near-lossless compression technique has better compression ratio than lossless compression technique while maintaining a maximum error limit for each pixel. It takes the advantage of both the lossy and lossless compression methods providing high compression ratio, which can be used for medical images while preserving diagnostic information. The proposed algorithm uses a resolution and modality independent threshold-based predictor, optimal quantization (q) level, and adaptive block size encoding. The proposed method employs resolution independent gradient edge detector (RIGED) for removing inter-pixel redundancy and block adaptive arithmetic encoding (BAAE) is used after quantization to remove coding redundancy. Quantizer with an optimum q level is used to implement the proposed method for high compression efficiency and for the better quality of the recovered images. The proposed method is implemented on volumetric 8-bit and 16-bit standard medical images and also validated on real time 16-bit-depth images collected from government hospitals. The results show the proposed algorithm yields a high coding performance with BPP of 1.37 and produces high peak signal-to-noise ratio (PSNR) of 51.35 dB for 8-bit-depth image dataset as compared with other near-lossless compression. The average BPP values of 3.411 and 2.609 are obtained by the proposed technique for 16-bit standard medical image dataset and real-time medical dataset respectively with maintained image quality. The improved near-lossless predictive coding technique achieves high compression ratio without losing diagnostic information from the image.
机译:近无损压缩技术具有比无损压缩技术更好的压缩比,同时保持每个像素的最大误差限制。它需要提供高压缩比的有损和无损压缩方法的优点,这可以用于保留诊断信息的同时医学图像。所提出的算法使用分辨率和模态独立的基于阈值的预测器,最佳量化(Q)级别和自适应块大小编码。所提出的方法采用分辨率独立的梯度边缘检测器(有操纵),用于去除像素间冗余,并且在量化之后使用块自适应算术编码(BAAE)以去除编码冗余。具有最佳Q电平的量化器用于实现高压缩效率的提出方法,并且用于恢复图像的更好质量。该方法在体积8位和16位标准医学图像上实现,并在从政府医院收集的实时16位深度图像上进行验证。结果表明,该算法利用BPP为1.37的高编码性能,并与其他近无损压缩相比,为8位深度图像数据集产生高峰信噪比(PSNR)。 3.411和2.609的平均BPP值是通过3位标准医学图像数据集和实时医疗数据集的所提出的技术获得,并且具有维护的图像质量。改进的近无损预测编码技术实现了高压缩比而不从图像中丢失诊断信息。

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