2019
DOI: 10.1109/access.2019.2915553
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Ant Lion Optimizer for Texture Classification: A Moving Convolutional Mask

Abstract: Texture classification is an important issue for a number of applications in machine vision, which could be addressed through learning texture features by using a convolutional mask. However, the traditional convolutional mask has a single orientation, and the learning ability is limited. In addition, the optimization process often falls into the local optima, and the discrimination capacity of the learned mask is unsatisfactory. Thus, a novel moving convolutional mask is presented to enhance the discriminatio… Show more

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Cited by 8 publications
(3 citation statements)
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References 36 publications
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“…To detect the change in natural environment, texture can be considered as a significant characteristics. Wang et al [170] used ALO to acheive the satisfactory convolutional mask by considering it as a combinatorial optimization. Their results prove the ability of ALO in and classification accuracy which has reached 91% and fitness value with 27%.…”
Section: ) Image Processing and Computer Visionmentioning
confidence: 99%
“…To detect the change in natural environment, texture can be considered as a significant characteristics. Wang et al [170] used ALO to acheive the satisfactory convolutional mask by considering it as a combinatorial optimization. Their results prove the ability of ALO in and classification accuracy which has reached 91% and fitness value with 27%.…”
Section: ) Image Processing and Computer Visionmentioning
confidence: 99%
“…This is because ML methods can help find and recognize the patterns and relationships of patients' treatments and risk factors from complex data sets. These discovered information can be used to effectively predict the future trending results of cancer types (Ji et al, 2016; Wang, Wang, Ye, & Yang, 2019). Many research results show that the prediction model based on ML can significantly improve the accuracy of cancer diagnosis and prediction of prognosis.…”
Section: Introductionmentioning
confidence: 99%
“…Another popular point of view is joint utilization of spatialspectral features [28], [44]- [46]. Spatial-spectral methods can often achieve relatively better results, but these methods have to deal directly with high-dimension data [51]- [53]. In [47], it is pointed out that these methods are insufficient to satisfy many complex situations, because the strength of the noise in the spatial and spectral domains is unequal.…”
Section: Introductionmentioning
confidence: 99%