首页> 外文会议>Image Processing, 1994. Proceedings. ICIP-94., IEEE International Conference >Image sequence classification using a neural network based active contour model and a hidden Markov model
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Image sequence classification using a neural network based active contour model and a hidden Markov model

机译:使用基于神经网络的主动轮廓模型和隐马尔可夫模型进行图像序列分类

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Contour finding of distinct features in 2D/3D images is essential for image analysis and computer vision. To overcome the potential problems associated with existing contour finding algorithms, the authors propose a neural network based active contour model (NN-SNAKE), which integrates a neural network classifier for systematic knowledge building, and an active contour model (also known as "Snake") for automated contour finding using energy functions. The paper describes work on image sequence classification using the proposed NN-SNAKE and hidden Markov models. The "snake" model was applied to extract visual features from a sequence of mouth images and a hidden Markov model was applied to perform word recognition on the visual features. With the visual information alone, the authors were able to achieve 93% recognition rate for 11 isolated words. The models performed lip-reading in a hand-free car audio system.
机译:在2D / 3D图像中发现不同特征的轮廓对于图像分析和计算机视觉至关重要。为了克服与现有轮廓发现算法相关的潜在问题,作者提出了一种基于神经网络的活动轮廓模型(NN-SNAKE),该模型集成了用于系统知识构建的神经网络分类器和活动轮廓模型(也称为“蛇形” ”),以使用能量函数自动寻找轮廓。本文介绍了使用提出的NN-SNAKE和隐马尔可夫模型进行图像序列分类的工作。应用“蛇”模型从一系列口腔图像中提取视觉特征,并使用隐马尔可夫模型对视觉特征进行单词识别。仅凭视觉信息,作者就能够对11个孤立的单词实现93%的识别率。这些模型在免提汽车音响系统中进行唇读。

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