scholarly journals A Survey Paper on Image Classification and Methods of Image Mining

2017 ◽  
Vol 169 (6) ◽  
pp. 10-12
Author(s):  
Sandeep Pandey ◽  
Sri Khetwat
Author(s):  
Lambodar Jena ◽  
Ramakrushna Swain ◽  
N.K. Kamila

Image mining is more than just an extension of data mining to image domain. Web Image mining is a technique commonly used to extract knowledge directly from images on WWW. Since main targets of conventional Web mining are numerical and textual data, Web mining for image data is on demand. There are huge image data as well as text data on the Web. However, mining image data from the Web is paid less attention than mining text data, since treating semantics of images are much more difficult. This paper proposes a novel image recognition and image classification technique using a large number of images automatically gathered from the Web as learning images. For classification the system uses imagefeature- based search exploited in content-based image retrieval(CBIR), which do not restrict target images unlike conventional image recognition methods and support vector machine(SVM), which is one of the most efficient & widely used statistical method for generic image classification that fit to the learning tasks. By the experiments it is observed that the proposed system outperforms some existing search systems.


2021 ◽  
Vol 2021 ◽  
pp. 1-11 ◽  
Author(s):  
Yue Wu

In the field of computer science, data mining is a hot topic. It is a mathematical method for identifying patterns in enormous amounts of data. Image mining is an important data mining technique involving a variety of fields. In image mining, art image organization is an interesting research field worthy of attention. The classification of art images into several predetermined sets is referred to as art image categorization. Image preprocessing, feature extraction, object identification, object categorization, object segmentation, object classification, and a variety of other approaches are all part of it. The purpose of this paper is to suggest an improved boosting algorithm that employs a specific method of traditional and simple, yet weak classifiers to create a complex, accurate, and strong classifier image as well as a realistic image. This paper investigated the characteristics of cartoon images, realistic images, painting images, and photo images, created color variance histogram features, and used them for classification. To execute classification experiments, this paper uses an image database of 10471 images, which are randomly distributed into two portions that are used as training data and test data, respectively. The training dataset contains 6971 images, while the test dataset contains 3478 images. The investigational results show that the planned algorithm has a classification accuracy of approximately 97%. The method proposed in this paper can be used as the basis of automatic large-scale image classification and has strong practicability.


2021 ◽  
Vol 1804 (1) ◽  
pp. 012110
Author(s):  
Dhamea A. Jasm ◽  
Murtadha M Hamad ◽  
Azmi Tawfek Hussein Alrawi

In this paper image mining concepts have been used for the diagnosis of the infected cells from the medical images. It manages the certain information extraction, picture information relationship and different examples which are not unequivocally put away in the pictures. This procedure is an expansion of information mining to picture area. Though the medical images are diagnosed using CT-scan and CAD (computer aided diagnosis) nearly 10-30% of the affected cells are not predicted but using this technique the medical images can be clearly diagnosed.


2018 ◽  
Vol 7 (03) ◽  
pp. 23755-23760
Author(s):  
S. Dhivya ◽  
Dr.R. Shanmugavadivu

In Today’s era Big Data is one of the most well-known research area that try to solve many research problems. The focus is mainly on how to come out those problems of Big Data and it could be handling in recent systems. Image mining and genetic algorithm is used to automate the process of images, patterns, data sets and etc. Image mining is used to extract the hidden images from the set of images. Genetic algorithm is also quite effective in solving certain optimization and intelligence problems and it is used in many applications, including image pattern recognition. The survey paper reviews of Big Data with edge detection methods on various types of images. In edge detection image pattern recognition is to choose the best images from the group of images by using both image mining and genetic algorithm techniques


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