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首页> 外文期刊>Journal of ambient intelligence and humanized computing >Adaptive morphological and bilateral filtering with ensemble convolutional neural network for pose-invariant face recognition
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Adaptive morphological and bilateral filtering with ensemble convolutional neural network for pose-invariant face recognition

机译:具有集合卷积神经网络的自适应形态和双侧过滤,实现姿势不变性面部识别

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摘要

Based on behavioural or physical characteristics, humans are recognized by using biometric system. In computer vision and pattern recognition domain, dynamic research is going on in face recognition. Face recognition algorithms are challenged by intra-personal changes in pose, illumination, and expression (PIE). Images are processed and matched with various databases. For face recognition, multi-task learning (MTL) is explored in this work. However, recognition of faces from blur and poor illumination becomes difficult. Recovering face from mixed noise degradation is a challenging and promising theme. This work explores an ensample convolutional neural network (ECNN) for face recognition. Initially a new adaptive morphological bilateral filtering (AMBF) method is proposed. Without introducing undershoot or overshoot, slope of edges is increased for sharpening a blur image. Quality sharpening enhancement is assured by various morphological operations like closing, opening, erosion and dilation with proper size of structure element. In addition to adaptive bilateral filter, mathematical morphology operations are included to enhance the performance. Then a multi-task ECNN is implemented for a main classification task and estimation of pose, blur, illumination, and expression (PBIE) as side tasks. For every side task, loss weights are assigned automatically by developing bat algorithm (BA) based dynamic-weighing method. In multi-task ECNN, balance between various tasks are achieved. Hence, proposed method is effectively demonstrated by the results of experimentation on entire multi-PIE dataset.
机译:基于行为或物理特性,使用生物识别系统来识别人类。在计算机视觉和模式识别域中,人动态研究正在识别方面进行。面部识别算法受到姿势,照明和表达(饼)的个人内部变化挑战。将图像处理并与各种数据库进行匹配。对于面部识别,在这项工作中探讨了多任务学习(MTL)。然而,难以识别来自模糊和差的照明的面部变得困难。从混合噪声降级中恢复面部是一个具有挑战性和有希望的主题。这项工作探讨了面部识别的Ensample卷积神经网络(ECNN)。最初提出了一种新的自适应形态双侧过滤(AMBF)方法。在不引入下冲或过冲的情况下,增加边缘的斜率用于锐化模糊图像。通过具有适当的结构元素的闭合,开启,腐蚀和扩张等各种形态学操作,确保了质量锐化增强。除了自适应双侧滤波器之外,还包括数学形态操作以增强性能。然后,为多任务ECNN实现用于主分类任务和姿势,模糊,照明和表达式(PBIE)作为侧任务。对于每个侧面任务,通过开发基于BAT算法(BA)的动态称量方法自动分配损耗权重。在多任务ECNN中,实现各种任务之间的平衡。因此,通过整个多派数据集的实验结果有效地证明了所提出的方法。

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