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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Integration of multiresolution image segmentation and neural networks for object depth recovery
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Integration of multiresolution image segmentation and neural networks for object depth recovery

机译:多分辨率图像分割和神经网络的集成,可用于物体深度恢复

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摘要

A novel technique for three-dimensional depth recovery based on two coaxial defocused images of an object with added pattern illumination is presented. The approach integrates object segmentation with depth estimation. Firstly segmentation is performed by a multiresolution based approach to isolate object regions from the background given the presence of blur and pattern illumination. The segmentation has three sub-procedures: image pyramid formation; linkage adaptation; and unsupervised clustering. These maximise the object recognition capability while ensuring accurate position information. For depth estimation, lower resolution information with a strong correlation to depth is fed into a three-layered neural network as input feature vectors and processed using a Back-Propagation algorithm. The resulting depth model of object recovery is then used with higher resolution data to obtain high accuracy depth measurements. Experimental results are presented that show low error rates and the robustness of the model with respect to pattern variation and inaccuracy in optical settings. (c) 2005 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:提出了一种基于物体的两个同轴散焦图像并添加图案照明的三维深度恢复的新技术。该方法将对象分割与深度估计集成在一起。首先,在存在模糊和图案照明的情况下,通过基于多分辨率的方法进行分割,以将物体区域与背景隔离。分割具有三个子过程:图像金字塔形成;链接适应;和无监督的群集。这些在确保准确的位置信息的同时最大化了对象识别能力。为了进行深度估计,将与深度高度相关的分辨率较低的信息作为输入特征向量输入三层神经网络,并使用反向传播算法进行处理。然后,将得到的对象恢复深度模型与更高分辨率的数据一起使用,以获取高精度的深度测量值。提出的实验结果显示出较低的错误率以及模型在光学设置中相对于图案变化和不准确性的稳健性。 (c)2005模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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