Abstract—Recent achievement of the learning-based classi-fication leads to the noticeable performance improvement in automatic polyp detection. Here, building large good datasets is very crucial for learning a reliable detector. However, it is practically challenging due to the diversity of polyp types, expensive inspection, and labor-intensive labeling tasks. For this reason, the polyp datasets usually tend to be imbalanced, i.e. the number of non-polyp samples is much larger than that of polyp samples, and learning with those imbalanced datasets results in a detector biased toward a non-polyp class. In this paper, we propose a data sampling-based boosting framework to learn an unbiased polyp detector from the imbal-anced datasets. In our ...
Abstract A deep convolution neural network image segmentation model based on a cost-effective active...
Objective: As an effective lesion heterogeneity depiction, texture information extracted from comput...
We present in this paper a novel dynamic learning method for classifying polyp candidate detections ...
Polyps in the colon can potentially become malignant cancer tissues where early detection and remova...
This paper summarizes the method of polyp detection in colonoscopy images and provides preliminary r...
Abstract. Adenomatous polyps in the colon have a high probability of developing into subsequent colo...
This paper is created to explore deep learning models and algorithms that results in highest accurac...
Current polyp detection methods from colonoscopy videos use exclusively normal (i.e., healthy) train...
Colorectal cancer (CRC) is one of the common types of cancer with a high mortality rate. Colonoscopy...
Automatic image detection of colonic polyps is still an unsolved problem due to the large variation ...
Abstract- Early diagnosis and removal of colonic polyps is effective in the elimination of subsequen...
Colonoscopies reduce the incidence of colorectal cancer through early recognition and resecting of t...
Automated polyp detection in colonoscopy videos has been demonstrated to be a promising way for colo...
AbstractIn this paper a method to perform real-time detection of polyps in videocolonoscopy is intro...
Given the increased interest in utilizing artificial intelligence as an assistive tool in the medica...
Abstract A deep convolution neural network image segmentation model based on a cost-effective active...
Objective: As an effective lesion heterogeneity depiction, texture information extracted from comput...
We present in this paper a novel dynamic learning method for classifying polyp candidate detections ...
Polyps in the colon can potentially become malignant cancer tissues where early detection and remova...
This paper summarizes the method of polyp detection in colonoscopy images and provides preliminary r...
Abstract. Adenomatous polyps in the colon have a high probability of developing into subsequent colo...
This paper is created to explore deep learning models and algorithms that results in highest accurac...
Current polyp detection methods from colonoscopy videos use exclusively normal (i.e., healthy) train...
Colorectal cancer (CRC) is one of the common types of cancer with a high mortality rate. Colonoscopy...
Automatic image detection of colonic polyps is still an unsolved problem due to the large variation ...
Abstract- Early diagnosis and removal of colonic polyps is effective in the elimination of subsequen...
Colonoscopies reduce the incidence of colorectal cancer through early recognition and resecting of t...
Automated polyp detection in colonoscopy videos has been demonstrated to be a promising way for colo...
AbstractIn this paper a method to perform real-time detection of polyps in videocolonoscopy is intro...
Given the increased interest in utilizing artificial intelligence as an assistive tool in the medica...
Abstract A deep convolution neural network image segmentation model based on a cost-effective active...
Objective: As an effective lesion heterogeneity depiction, texture information extracted from comput...
We present in this paper a novel dynamic learning method for classifying polyp candidate detections ...