scholarly journals Gradual Block-based Efficient Lossy Location Coding for Image Retrieval

2013 ◽  
Vol 18 (2) ◽  
pp. 319-322
Author(s):  
Gyeongmin Choi ◽  
Hyunil Jung ◽  
Haekwang Kim
2011 ◽  
Vol 2011 ◽  
pp. 1-7 ◽  
Author(s):  
Xian-Hua Han ◽  
Yen-Wei Chen

We describe an approach for the automatic modality classification in medical image retrieval task of the 2010 CLEF cross-language image retrieval campaign (ImageCLEF). This paper is focused on the process of feature extraction from medical images and fuses the different extracted visual features and textual feature for modality classification. To extract visual features from the images, we used histogram descriptor of edge, gray, or color intensity and block-based variation as global features and SIFT histogram as local feature. For textual feature of image representation, the binary histogram of some predefined vocabulary words from image captions is used. Then, we combine the different features using normalized kernel functions for SVM classification. Furthermore, for some easy misclassified modality pairs such as CT and MR or PET and NM modalities, a local classifier is used for distinguishing samples in the pair modality to improve performance. The proposed strategy is evaluated with the provided modality dataset by ImageCLEF 2010.


Author(s):  
Yanhong Wang ◽  
Ruizhen Zhao ◽  
Liequan Liang ◽  
Xinwei Zheng ◽  
Yigang Cen ◽  
...  

2018 ◽  
Vol 11 (1) ◽  
pp. 42
Author(s):  
Ahmad Wahyu Rosyadi ◽  
Renest Danardono ◽  
Siprianus Septian Manek ◽  
Agus Zainal Arifin

One of the techniques in region based image retrieval (RBIR) is comparing the global feature of an entire image and the local feature of image’s sub-block in query and database image. The determined sub-block must be able to detect an object with varying sizes and locations. So the sub-block with flexible size and location is needed. We propose a new method for local feature extraction by determining the flexible size and location of sub-block based on the transition region in region based image retrieval. Global features of both query and database image are extracted using invariant moment. Local features in database and query image are extracted using hue, saturation, and value (HSV) histogram and local binary patterns (LBP). There are several steps to extract the local feature of sub-block in the query image. First, preprocessing is conducted to get the transition region, then the flexible sub-block is determined based on the transition region. Afterward, the local feature of sub-block is extracted. The result of this application is the retrieved images ordered by the most similar to the query image. The local feature extraction with the proposed method is effective for image retrieval with precision and recall value are 57%.


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