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Computer modeling and simulation techniques for computer vision problems.

机译:针对计算机视觉问题的计算机建模和仿真技术。

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Verification of computer vision theories is facilitated by the development and implementation of computer simulation systems. Computer simulation avoids the necessity of building actual systems; they are fast, flexible, and can be easily duplicated for use by others. Development and implementation of computational models in computer vision are both interesting and challenging. It involves research in diverse areas and requires integration of both science and technology. This dissertation addresses the computer modeling and simulation techniques for two computer vision problems: object recognition and image sensing process. Image sensing process investigates how an image is sensed by specifying the input characteristics of the object and the imaging devices, while object recognition is a high level processing of the sensed image. We present a neural network model to solve the problem of 3-D object identification and pose estimation. The network is divided into two stages, namely Feature Extraction Stage and Feature Detection Stage to extract the feature vectors and to identify the objects, respectively. 3-D moments are used as input feature vectors to the network. Therefore, unoccluded objects are required. We also present a useful computational model to explore the image sensing process. This model decouples the photometric information and the geometric information of objects in the scene. Therefore, it is computationally tractable. Finally, we extend the proposed image sensing model to simulate the formation of moving objects and stereo imaging applications. All the models presented here have been implemented and the implementations are efficient, modular, extensible, and user-friendly so that others can easily reproduce and/or verify their experiments on a broader set of computer vision theories.
机译:计算机仿真系统的开发和实施有助于对计算机视觉理论的验证。计算机仿真避免了构建实际系统的必要;它们快速,灵活,并且可以很容易地复制以供他人使用。计算机视觉中计算模型的开发和实现既有趣又充满挑战。它涉及不同领域的研究,需要科学技术的融合。本文针对两个计算机视觉问题的计算机建模和仿真技术:目标识别和图像传感过程。图像感测过程通过指定对象和成像设备的输入特性来研究如何感测图像,而对象识别是感测图像的高级处理。我们提出了一种神经网络模型来解决3-D目标识别和姿态估计问题。该网络被分为两个阶段,即特征提取阶段和特征检测阶段,以分别提取特征向量和识别对象。 3-D矩用作网络的输入特征向量。因此,需要没有遮挡的物体。我们还提出了一个有用的计算模型来探索图像传感过程。该模型将场景中对象的光度信息和几何信息解耦。因此,它在计算上是易于处理的。最后,我们扩展了提出的图像传感模型,以模拟运动物体的形成和立体成像应用。此处介绍的所有模型均已实现,并且实现高效,模块化,可扩展且用户友好,因此其他人可以轻松地在更广泛的计算机视觉理论上重现和/或验证其实验。

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