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首页> 外文期刊>IEEE Transactions on Neural Networks >Joint solution of low, intermediate, and high-level vision tasks by evolutionary optimization: Application to computer vision at low SNR
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Joint solution of low, intermediate, and high-level vision tasks by evolutionary optimization: Application to computer vision at low SNR

机译:通过进化优化联合解决低,中和高级视觉任务:在低信噪比下应用于计算机视觉

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摘要

Methods for conducting model-based computer vision from low-SNR (/spl les/1 dB) image data are presented. Conventional algorithms break down in this regime due to a cascading of noise artifacts, and inconsistencies arising from the lack of optimal interaction between high- and low-level processing. These problems are addressed by solving low-level problems such as intensity estimation, segmentation, and boundary estimation jointly (synergistically) with intermediate-level problems such as the estimation of position, magnification, and orientation, and high-level problems such as object identification and scene interpretation. This is achieved by formulating a single objective function that incorporates all the data and object models, and a hierarchy of constraints in a Bayesian framework. All image-processing operations, including those that exploit the low and high-level variables to satisfy multi-level pattern constraints, result directly from a parallel multi-trajectory global optimization algorithm. Experiments with simulated low-count (7-9 photons/pixel) 2-D Poisson images demonstrate that compared to non-joint methods, a joint solution not only results in more reliable scene interpretation, but also a superior estimation of low-level imaging variables. Typically, most object parameters are estimated to within a 5% accuracy even with overlap and partial occlusion.
机译:提出了从低SNR(/ spl les / 1 dB)图像数据进行基于模型的计算机视觉的方法。由于噪声伪影的级联以及由于高低级处理之间缺乏最佳交互作用而导致的不一致,常规算法在这种情况下会崩溃。这些问题通过联合(协同)解决诸如强度估计,分割和边界估计之类的低级问题与诸如位置,放大倍数和方向的估计之类的中级问题以及诸如物体识别之类的高级问题共同解决(解决)和场景解释。这是通过制定一个包含所有数据和对象模型以及贝叶斯框架中的约束层次结构的单个目标函数来实现的。所有图像处理操作,包括那些利用低级和高级变量来满足多层模式约束的操作,都直接来自于并行多轨迹全局优化算法。使用模拟的低计数(7-9光子/像素)二维Poisson图像进行的实验表明,与非联合方法相比,联合解决方案不仅可以提供更可靠的场景解释,而且可以对低级成像进行更好的估计变量。通常,即使有重叠和部分遮挡,大多数对象参数的估计精度也都在5%以内。

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