نتایج جستجو برای: deep stacked extreme learning machine

تعداد نتایج: 978067  

2016
Shan Pang Xinyi Yang

In recent years, some deep learning methods have been developed and applied to image classification applications, such as convolutional neuron network (CNN) and deep belief network (DBN). However they are suffering from some problems like local minima, slow convergence rate, and intensive human intervention. In this paper, we propose a rapid learning method, namely, deep convolutional extreme l...

2012
Minmin Chen Zhixiang Xu Kilian Q. Weinberger Fei Sha

Stacked Denoising Autoencoders (SDAs) [4] have been used successfully in many learning scenarios and application domains. In short, denoising autoencoders (DAs) train one-layer neural networks to reconstruct input data from partial random corruption. The denoisers are then stacked into deep learning architectures where the weights are fine-tuned with back-propagation. Alternatively, the outputs...

Journal: :Mathematical Problems in Engineering 2020

Journal: :IEEE Transactions on Vehicular Technology 2021

This work shows that a massive multiple-input multiple-output (MIMO) system with low-resolution analog-to-digital converters (ADCs) forms natural extreme learning machine (ELM). The receive antennas at the base station serve as hidden nodes of ELM, and ADCs act ELM activation function. By adding random biases to received signals optimizing output weights, can effectively tackle hardware impairm...

Journal: :Mathematical Problems in Engineering 2013

Journal: :Comput. Graph. Forum 2015
Zhige Xie Kai Xu Wen Shan Ligang Liu Yueshan Xiong Hui Huang

Feature learning for 3D shapes is challenging due to the lack of natural paramterization for 3D surface models. We adopt the multi-view depth image representation and propose Multi-View Deep Extreme Learning Machine (MVD-ELM) to achieve fast and quality projective feature learning for 3D shapes. In contrast to existing multiview learning approaches, our method ensures the feature maps learned f...

2017
Andrea Caroppo Alessandro Leone Pietro Siciliano

Facial Expression Recognition is still one of the challenging fields in pattern recognition and machine learning science. Despite efforts made in developing various methods for this topic, existing approaches lack generalizability and almost all studies focus on more traditional hand-crafted features extraction to characterize facial expressions. Moreover, effective classifiers to model the spa...

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