Deep Neural Learning Adaptive Sequential Monte Carlo for Automatic Image and Speech Recognition

dc.contributor.authorPatcharin Kamsing
dc.contributor.authorPeerapong Torteeka
dc.contributor.authorWuttichai Boonpook
dc.contributor.authorChunxiang Cao
dc.date.accessioned2025-07-21T06:04:06Z
dc.date.issued2020-10-07
dc.description.abstractTo enhance the performance of image classification and speech recognition, the optimizer is considered an important factor for achieving high accuracy. The state-of-the-art optimizer can perform to serve in applications that may not require very high accuracy, yet the demand for high-precision image classification and speech recognition is increasing. This study implements an adaptive method for applying the particle filter technique with a gradient descent optimizer to improve model learning performance. Using a pretrained model helps reduce the computational time to deploy an image classification model and uses a simple deep convolutional neural network for speech recognition. The applied method results in a higher speech recognition accuracy score—89.693% for the test dataset—than the conventional method, which reaches 89.325%. The applied method also performs well on the image classification task, reaching an accuracy of 89.860% on the test dataset, better than the conventional method, which has an accuracy of 89.644%. Despite a slight difference in accuracy, the applied optimizer performs well in this dataset overall.
dc.identifier.doi10.1155/2020/8866259
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/9746
dc.subject.classificationAdvanced Neural Network Applications
dc.titleDeep Neural Learning Adaptive Sequential Monte Carlo for Automatic Image and Speech Recognition
dc.typeArticle

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