Dr. Bushra khraibet Jasim is an assistance professor in Department of Industrial Management., faculty of Computer Science, University of technology . My research is interesting in AI, data mining, deep learning and image processing.
Ph.DProfessor (Assistant)
inb- cena unit
Machine LearningClassificationClusteringSupervised LearningImage ProcessingUnsupervised LearningFeature SelectionData Mining and Knowledge DiscoveryComputational IntelligenceStatistical LearningData ClusteringObject RecognitionSignal, Image and Video ProcessingImage SegmentationMachine IntelligenceText MiningDigital Image ProcessingImage RecognitionImage AnalysisImage MiningStatistical Data AnalysisGenetic ProgrammingDocument Image AnalysisImage UnderstandingGenetic AlgorithmAlgorithm DevelopmentAssociation Rules
Machine LearningClassificationClusteringSupervised LearningImage ProcessingUnsupervised LearningFeature SelectionData Mining and Knowledge DiscoveryComputational IntelligenceStatistical LearningData ClusteringObject RecognitionSignal, Image and Video ProcessingImage SegmentationMachine IntelligenceText MiningDigital Image ProcessingImage RecognitionImage AnalysisImage MiningStatistical Data AnalysisGenetic ProgrammingDocument Image AnalysisImage UnderstandingGenetic AlgorithmAlgorithm DevelopmentAssociation Rules
اساسيات الحاسوب
لايوجد
— In light of the pandemic that has swept the world, the use of e-learning in educational institutions has become an urgent necessity for continued knowledge communication with students. Educational institutions can benefit from the free tools that Google provide and from these applications, Google classroom which is characterized by ease of use, but the efficiency of using Google classroom is affected by several variables not studied in previous studies Clearly, this study aimed to identify the use of Google classroom as a system for managing e-learning and the factors affecting the performance of students and lecturer. The data of this study were collected from 219 members of the faculty and students at the College of Administra
... Show MoreMany image processing and machine learning applications require sufficient image feature selection and representation. This can be achieved by imitating human ability to process visual information. One such ability is that human eyes are much more sensitive to changes in the intensity (luminance) than the color information. In this paper, we present how to exploit luminance information, organized in a pyramid structure, to transfer properties between two images. Two applications are presented to demonstrate the results of using luminance channel in the similarity metric of two images. These are image generation; where a target image is to be generated from a source one, and image colorization; where color information is to be browsed from o
... Show MoreText based-image clustering (TBIC) is an insufficient approach for clustering related web images. It is a challenging task to abstract the visual features of images with the support of textual information in a database. In content-based image clustering (CBIC), image data are clustered on the foundation of specific features like texture, colors, boundaries, shapes. In this paper, an effective CBIC) technique is presented, which uses texture and statistical features of the images. The statistical features or moments of colors (mean, skewness, standard deviation, kurtosis, and variance) are extracted from the images. These features are collected in a one dimension array, and then genetic algorithm (GA) is applied for image clustering.
... Show MoreAbstract: Word sense disambiguation (WSD) is a significant field in computational linguistics as it is indispensable for many language understanding applications. Automatic processing of documents is made difficult because of the fact that many of the terms it contain ambiguous. Word Sense Disambiguation (WSD) systems try to solve these ambiguities and find the correct meaning. Genetic algorithms can be active to resolve this problem since they have been effectively applied for many optimization problems. In this paper, genetic algorithms proposed to solve the word sense disambiguation problem that can automatically select the intended meaning of a word in context without any additional resource. The proposed algorithm is evaluated on a col
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