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Efficient estimation of ideal-observer performance in classification tasks involving high-dimensional complex backgrounds

机译:对涉及高维复杂背景的分类任务中理想观察者性能的有效估计

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The Bayesian ideal observer is optimal among all observers and sets an absolute upper bound for the performance of any observer in classification tasks [Van Trees, Detection, Estimation, and Modulation Theory, Part I (Academic, 1968).]. Therefore, the ideal observer should be used for objective image quality assessment whenever possible. However, computation of ideal-observer performance is difficult in practice because this observer requires the full description of unknown, statistical properties of high-dimensional, complex data arising in real life problems. Previously, Markov-chain Monte Carlo (MCMC) methods were developed by Kupinski et al. [J. Opt. Soc. Am. A 20, 430(2003) ] and by Park et al. [J. Opt. Soc. Am. A 24, B136 (2007) and IEEE Trans. Med. Imaging 28, 657 (2009) ] to estimate the performance of the ideal observer and the channelized ideal observer (CIO), respectively, in classification tasks involving non-Gaussian random backgrounds. However, both algorithms had the disadvantage of long computation times. We propose a fast MCMC for real-time estimation of the likelihood ratio for the CIO. Our simulation results show that our method has the potential to speed up ideal-observer performance in tasks involving complex data when efficient channels are used for the CIO.
机译:贝叶斯理想观察者在所有观察者中都是最佳的,并且为分类任务中的任何观察者的性能设定了绝对上限[范树,检测,估计和调制理论,第一部分(Academic,1968年]。因此,应尽可能使用理想的观察者进行客观的图像质量评估。但是,在实践中很难计算理想观察者的性能,因为该观察者需要完整描述现实生活中出现的高维,复杂数据的未知统计特性。以前,Kupinski等人开发了马尔可夫链蒙特卡罗(MCMC)方法。 [J.选择。 Soc。上午。 A 20,430(2003)]和Park等人。 [J.选择。 Soc。上午。 A 24,B136(2007)和IEEE Trans。中成像28,657(2009)]分别估计理想观察者和信道化理想观察者(CIO)在涉及非高斯随机背景的分类任务中的性能。但是,两种算法都具有计算时间长的缺点。我们提出了一种快速MCMC,用于实时估计CIO的似然比。我们的仿真结果表明,当将有效通道用于CIO时,我们的方法有可能在涉及复杂数据的任务中加快理想观察者的性能。

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