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Quality issues in remote-sensing image compression: near-lossless coding of optical and microwave data

机译:遥感图像压缩中的质量问题:光学和微波数据的近无损编码

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In this work; near-lossless compression, i.e., yielding strictly bounded reconstruction error, is proposed for highquality compression of remote sensing images. First, a classified causal DPCM scheme is presented for optical data, either multi/hyperspectral (3D), or panchromatic (2D) observations. It is based on a classified linear-regression prediction, followed by context-based arithmetic coding of the outcome prediction errors, and provides excellent performances, both for reversible and for irreversible, i.e., near-lossless, compression. Coding time are affordable thanks to fast convergence of training. Decoding is always performed in real time. Then, an original approach to near-lossless compression of SAR images that is based on the Rational Laplacian Pyramid (RLP) is presented. The baseband icon of the RLP is DPCM encoded, the intermediate layers are uniformly quantized, and the bottom layer is is logarithmically quantized. As a consequence, the relative error, i.e., pixel ratio of original to decoded image, can be strictly bounded by the quantization step size of the a given distortion, by exploiting the quantization noise feedback loops at the encoder. In both cases, if the reconstruction errors fall within the boundaries of the noise distributions, either digitization noise, or speckle, the decoded images will be virtually lossless, even though their encoding is not strictly reversible.
机译:在这项工作中;提出了近无损压缩,即产生严格有界重建误差,用于遥感图像的高度压缩。首先,提供了一种分类的因果DPCM方案,用于光学数据,多/高光谱(3D)或全肤色(2D)观察。它基于分类的线性回归预测,随后是结果预测误差的基于上下文的算术编码,并提供了优异的性能,用于可逆和不可逆,即近无损,压缩。由于培训快速融合,编码时间价格实惠。始终实时进行解码。然后,提出了一种原始方法,用于基于Rational Laplacian金字塔(RLP)的SAR图像的近无损压缩。 RLP的基带图标是编码的DPCM,中间层均匀量化,底层是对数量子化的。结果,通过利用编码器处的量化噪声反馈循环来利用给定失真的量化步长,相对误差,即原稿对解码图像的像素比,可以严格界限。在这两种情况下,如果重建错误落入噪声分布的边界内,即使它们的编码不严格可逆,解码图像也将是几乎无损的数字化噪声或散斑。

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