The Karhunen-Lo\`eve transform (KLT) is often used for data decorrelation and dimensionality reduction. Because its computation depends on the matrix of covariances of the input signal, the use of the KLT in real-time applications is severely constrained by the difficulty in developing fast algorithms to implement it. In this context, this paper proposes a new class of low-complexity transforms that are obtained through the application of the round function to the elements of the KLT matrix. The proposed transforms are evaluated considering figures of merit that measure the coding power and distance of the proposed approximations to the exact KLT and are also explored in image compression experiments. Fast algorithms are introduced for the proposed approximate transforms. It was shown that the proposed transforms perform well in image compression and require a low implementation cost.
翻译:Karhunen-Lo ⁇ ⁇ éeve变换(KLT)通常用于数据装饰和维度减低。因为其计算取决于输入信号的共变量矩阵,因此实时应用中KLT的使用由于难以制定快速算法加以实施而受到严重制约。在这方面,本文件提出一个新的低复杂性变换类别,该类别是通过对KLT矩阵要素应用圆形函数获得的。对拟议变换进行评价时,考虑了测量拟议近似值与精确KLT的编码功率和距离的功绩数字,并在图像压缩实验中加以探讨。对拟议的近似变换采用快速算法,表明拟议的变换在图像压缩方面效果良好,需要较低的执行成本。