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Deconvolution for Slowly Time-Varying Systems 3D cases

机译:慢慢时变量的解卷积3D案例

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In the present work, we discuss an extension of the deconvolution techniques of Sekko [20] and Neveux [18] to 3D signals. The signals are assumed to be degraded by electronic linear systems, in which parameters are slowly time-varying such as sensors or other storage systems. For this purpose, Sekko & al. [20] developed a structure that has been adapted to time-varying systems [18] in order to produce an inverse filter with constant gain. This latter method was applied successfully to ordinary images [23]. The treatment of omnidirectional images requires working on the unit sphere. Therefore, the problem should be cast in 3D. In the 3D case, the deconvolution method [18] can be applied after some manipulations. The Heinz-Hopf fibration offers the possibility to consider that the sphere is similar to a torus. The advantage of this approach is that Kalman filtering can be applied and omnidirectional images projected on the sphere can be deconvolved.
机译:在目前的工作中,我们讨论了Sekko [20]和Neveux [18]的解卷积技术的扩展到3D信号。 假设信号通过电子线性系统降低,其中参数是缓慢时变的诸如传感器或其他存储系统。 为此目的,Sekko&al。 [20]开发了一种适用于时变系统的结构[18],以便产生具有恒定增益的逆滤波器。 后一种方法成功应用于普通图像[23]。 对全向图像的处理需要在单位球体上工作。 因此,应在3D中施放问题。 在3D情况下,可以在一些操作之后应用解卷积方法[18]。 Heinz-Hopf振动提供了可能认为球体类似于圆环的可能性。 这种方法的优点是可以应用卡尔曼滤波,并且可以在球体上投射的全向图像可以被解码。

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