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Algorithm and hardware solution to VLSI retinas performing stochastic optimization

机译:VLSI视网膜执行随机优化的算法和硬件解决方案

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Abstract: Using Bayesian approach, early-vision tasks can be formulated into a statistical regularization problem. With the help of a Markov random field (MRF) description, an posterior energy function is defined on the image. Using MAP (maximum a posteriori) criterion, the restoration process becomes equivalent to the minimization of the non-convex energy. Stochastic methods offer a general framework to solve such difficult problems. We concentrate on image restoration preserving discontinuities, and on the so called Geman's energy function characterizing it. This energy is defined upon a continuous intensity field in interaction with a binary line process, allowing for sharp edges in the restoration. We propose an algorithm and hardware solutions for performing video rate stochastic minimization through a dedicated optoelectronic VLSI retina. The operation of the stochastic algorithm we present is twofold. On one hand, thermal equilibrium in the continuous field comes from a deterministic minimization perturbed by a quasi-static noise process. Quasi-static meaning that the noise process is constant during the minimization. The binary field, on the other hand, is updated using a Gibbs sampler technique. Next we propose a VLSI implementation of this algorithm. It features an asynchronous analogue stochastic resistive network implementing the thermal equilibrium of the continuous field, and a parallel array of synchronous stochastic processing elements providing Gibbs sampling of the binary line field. An optoelectronic VLSI efficient random number generator provides the retina with the massive amount of random numbers required for video rate operation. !13
机译:摘要:使用贝叶斯方法,可以将早期视觉任务表述为统计正则化问题。借助马尔可夫随机场(MRF)描述,在图像上定义了后能量函数。使用MAP(最大后验)准则,恢复过程变得等效于非凸能量的最小化。随机方法提供了解决此类难题的通用框架。我们专注于保留图像不连续性的图像恢复,以及表征它的所谓Geman能量函数。该能量是在与二进制线过程相互作用的连续强度场上定义的,从而允许在恢复过程中使用锋利的边缘。我们提出了一种通过专用光电VLSI视网膜执行视频速率随机最小化的算法和硬件解决方案。我们提出的随机算法的操作是双重的。一方面,连续场中的热平衡来自准静态噪声过程对确定性最小化的影响。准静态意味着噪声过程在最小化过程中是恒定的。另一方面,二进制字段是使用Gibbs采样器技术更新的。接下来,我们提出该算法的VLSI实现。它具有实现连续场热平衡的异步模拟随机电阻网络,以及同步随机处理元件的并行阵列,可提供二进制线场的吉布斯采样。光电VLSI高效随机数发生器为视网膜提供视频速率操作所需的大量随机数。 !13

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