[[abstract]]In this paper, a content-based scheme for assisting collecting similar medical image to be used for the tutorial of differential diagnosis is presented. The system uses visual-based user interface to allow the user to enter or query an image by selecting the region of interest (ROI) regions; and uses neural network to classify the relationship between the images stored in database. The system will output a set of candidate images that are texturalsimilar to the query image. If there are more than one input blocks, the system will perform multiple query and then combining the result set to obtain the most similar one to output. We extract the major 2D FFT coefficients to represent the texture features of each marked region and us...
The number of images produced per day in modern hospitals followed an exponential growth during the ...
The emerging paradigms in cancer research indicate the need for a multi-perspective and multi-modal ...
This paper presents a framework for effective and fast content-based image retrieval for multi-modal...
[[abstract]]A content based scheme to retrieve computed tomographic images (CT) of the lung is prese...
[[abstract]]In this paper, a content-based scheme for assisting the construction of a teaching file ...
Image retrieval is currently a very active research field due to the large amount of visual data bei...
Practical image retrieval systems must fully use image databases. We investigated the accuracy of ou...
Purpose: Clinical workflows and user interfaces of image-based computer-aided diagnosis (CAD) for in...
The diagnosis of lung diseases is a complicated and time-consuming task for radiologists. Often radi...
The number of hospital-generated digital images is increasing rapidly, as effective medical images c...
Pulmonary computed tomography (CT) scans assist radiologists in early detection of lung nodules, and...
The similarity-based retrieval of lung nodule computed tomography (CT) images is an important task i...
In this paper, a computer-aided detection system is developed to detect lung nodules at an early st...
To evaluate the reader’s diagnostic performance against the ground truth with and without the help o...
The emerging paradigms in cancer research indicate the need for a multi-perspective and multimodal s...
The number of images produced per day in modern hospitals followed an exponential growth during the ...
The emerging paradigms in cancer research indicate the need for a multi-perspective and multi-modal ...
This paper presents a framework for effective and fast content-based image retrieval for multi-modal...
[[abstract]]A content based scheme to retrieve computed tomographic images (CT) of the lung is prese...
[[abstract]]In this paper, a content-based scheme for assisting the construction of a teaching file ...
Image retrieval is currently a very active research field due to the large amount of visual data bei...
Practical image retrieval systems must fully use image databases. We investigated the accuracy of ou...
Purpose: Clinical workflows and user interfaces of image-based computer-aided diagnosis (CAD) for in...
The diagnosis of lung diseases is a complicated and time-consuming task for radiologists. Often radi...
The number of hospital-generated digital images is increasing rapidly, as effective medical images c...
Pulmonary computed tomography (CT) scans assist radiologists in early detection of lung nodules, and...
The similarity-based retrieval of lung nodule computed tomography (CT) images is an important task i...
In this paper, a computer-aided detection system is developed to detect lung nodules at an early st...
To evaluate the reader’s diagnostic performance against the ground truth with and without the help o...
The emerging paradigms in cancer research indicate the need for a multi-perspective and multimodal s...
The number of images produced per day in modern hospitals followed an exponential growth during the ...
The emerging paradigms in cancer research indicate the need for a multi-perspective and multi-modal ...
This paper presents a framework for effective and fast content-based image retrieval for multi-modal...