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  • 标题:Probabilistic Memory Model for Visual Images Categorization
  • 本地全文:下载
  • 作者:Linxia Xiao ; Yanjiang Wang ; Baodi Liu
  • 期刊名称:COMPUTING AND INFORMATICS
  • 印刷版ISSN:1335-9150
  • 出版年度:2020
  • 卷号:39
  • 期号:6
  • 页码:1229-1249
  • DOI:10.31577/cai_2020_6_1229
  • 出版社:COMPUTING AND INFORMATICS
  • 摘要:During the past decades, numerous memory models have been proposed, which focused mainly on how spoken words are studied, whereas models on how visual images are studied are still limited. In this study, we propose a probabilistic memory model (PMM) for visual images categorization which is able to mimic the workings of the human brain during the image storage and retrieval. First, in the learning phase, the visual images are represented by the feature vectors extracted with convolutional neural network (CNN) and each feature component is assumed to conform to a Gaussian distribution and may be incompletely copied with a certain probability or randomly produced in accordance to an exponential distribution. Then, in the test phase, the likelihood ratio between the test image and each studied image is calculated based on the probabilistic inference theory, and an odd value in favor of an old item over a new one is obtained based on all likelihood values. Finally, if the odd value is above a certain threshold, the Bayesian decision rule is applied for image classification. Experimental results on two benchmark image datasets demonstrate that the proposed PMM can perform well on categorization tasks for both studied and non-studied images. Download data is not yet available.
  • 其他摘要:During the past decades, numerous memory models have been proposed, which focused mainly on how spoken words are studied, whereas models on how visual images are studied are still limited. In this study, we propose a probabilistic memory model (PMM) for visual images categorization which is able to mimic the workings of the human brain during the image storage and retrieval. First, in the learning phase, the visual images are represented by the feature vectors extracted with convolutional neural network (CNN) and each feature component is assumed to conform to a Gaussian distribution and may be incompletely copied with a certain probability or randomly produced in accordance to an exponential distribution. Then, in the test phase, the likelihood ratio between the test image and each studied image is calculated based on the probabilistic inference theory, and an odd value in favor of an old item over a new one is obtained based on all likelihood values. Finally, if the odd value is above a certain threshold, the Bayesian decision rule is applied for image classification. Experimental results on two benchmark image datasets demonstrate that the proposed PMM can perform well on categorization tasks for both studied and non-studied images.
  • 关键词:Memory model; image categorization; probability distribution; probabilistic inference; Bayesian decision Abstract During the past decades; numerous memory models have been proposed; which focused mainly on how spoken words are studied; whereas models on how visual images are studied are still limited;In this study; we propose a probabilistic memory model (PMM) for visual images categorization which is able to mimic the workings of the human brain during the image storage and retrieval;First; in the learning phase; the visual images are represented by the feature vectors extracted with convolutional neural network (CNN) and each feature component is assumed to conform to a Gaussian distribution and may be incompletely copied with a certain probability or randomly produced in accordance to an exponential distribution;Then; in the test phase; the likelihood ratio between the test image and each studied image is calculated based on the probabilistic inference theory; and an odd value in favor of an old item over a new one is obtained based on all likelihood values;Finally; if the odd value is above a certain threshold; the Bayesian decision rule is applied for image classification;Experimental results on two benchmark image datasets demonstrate that the proposed PMM can perform well on categorization tasks for both studied and non-studied images;Downloads Download data is not yet available.
  • 其他关键词:Memory model;image categorization;probability distribution;probabilistic inference;Bayesian decision
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