In this paper, we propose a novel method for object localization, generally applicable to medical images in which the objects can be distinguished from the background mainly based on feature differences. We design a new CRF model with additional contrast and interest-region potentials, which encode the higher-order contextual information between regions, on the global and structural levels. We also propose a sparse-coding based classification approach for the interest-region detection with discriminative dictionaries, to serve as a second opinion for more accurate region labeling. We evaluate our object localization method on two medical imaging applications: lesion dissimilarity on thoracic PET-CT images, and cell segmentation on microscop...
Considering the two-class classification problem in brain imaging data analysis, we propose a sparse...
AbstractLocalizing an object within an image is a common task in the field of computer vision, and r...
To face the increasing demand on quality healthcare, cutting edge automation technology is being app...
AbstractThis paper introduces the rough representation of a region of interest (ROI) in medical imag...
Abstract. The performance of automatic lesion detection is often af-fected by the intra- and inter-s...
Recent revolutionary advances in deep learning (DL) have fueled several breakthrough achievements in...
Abstract—Whole slide imaging technology enables patholo-gists to screen biopsy images and make a dia...
The task of object localization in medical images is a corner stone of automatic image processing an...
Automated detection of visually salient regions is an ac-tive area of research in computer vision. S...
Object classification and localization are important components of image understanding. For a comput...
We consider the problem of characterization of spatial region data such as the regions of interest (...
International audienceWe introduce a method for object class detection and localization which combin...
To face the increasing demand of quality healthcare, cutting-edge automation technology is being app...
Graduation date: 2008Image feature detection and matching are two critical processes for many comput...
We propose a framework for detecting, characterizing and classifying spatial Regions of Interest (RO...
Considering the two-class classification problem in brain imaging data analysis, we propose a sparse...
AbstractLocalizing an object within an image is a common task in the field of computer vision, and r...
To face the increasing demand on quality healthcare, cutting edge automation technology is being app...
AbstractThis paper introduces the rough representation of a region of interest (ROI) in medical imag...
Abstract. The performance of automatic lesion detection is often af-fected by the intra- and inter-s...
Recent revolutionary advances in deep learning (DL) have fueled several breakthrough achievements in...
Abstract—Whole slide imaging technology enables patholo-gists to screen biopsy images and make a dia...
The task of object localization in medical images is a corner stone of automatic image processing an...
Automated detection of visually salient regions is an ac-tive area of research in computer vision. S...
Object classification and localization are important components of image understanding. For a comput...
We consider the problem of characterization of spatial region data such as the regions of interest (...
International audienceWe introduce a method for object class detection and localization which combin...
To face the increasing demand of quality healthcare, cutting-edge automation technology is being app...
Graduation date: 2008Image feature detection and matching are two critical processes for many comput...
We propose a framework for detecting, characterizing and classifying spatial Regions of Interest (RO...
Considering the two-class classification problem in brain imaging data analysis, we propose a sparse...
AbstractLocalizing an object within an image is a common task in the field of computer vision, and r...
To face the increasing demand on quality healthcare, cutting edge automation technology is being app...