International audienceAutomatically and reliably delineating tumor contours in noisy and blurring PET images is a challenging work in clinical oncology. In this paper, we introduce a specific unsupervised learning method to this end. More specifically, a robust clustering algorithm with spatial knowledge enhancement is developed in the framework of belief functions, a formal and powerful tool for modeling and reasoning with uncertain and/or imprecise information. Diverse patch-based image features are extracted to comprehensively describe PET image voxels. Then, informative input features are iteratively selected to learn an adaptive kernel-induced metric in an unsupervised way, so as to precisely grouping voxels into different clusters. Th...
Statistical imaging together with other machine learning techniques are the epitome of digitalizing...
Abstract: Tumor segmentation is one of the important steps for volume measurement of nasopharyngeal ...
PURPOSE: Accurate and robust image segmentation was identified as one of the most challenging issues...
International audienceAutomatically and reliably delineating tumor contours in noisy and blurring PE...
International audienceWhile hybrid PET/CT scanner is becoming a standard imaging technique in clinic...
International audiencePositron Emission Tomography (PET) and Computed Tomography (CT) are two modali...
Radiation therapy is one of the most principal options used in the treatment of malignant tumors. To...
International audienceAn automatic evidential segmentation method based on Dempster-Shafer theory an...
An automatic evidential segmentation method based on Dempster-Shafer theory and deep learning is pro...
International audiencePrecise delineation of target tumor is a key factor to ensure the effectivenes...
Recent developments in statistical image analysis and machine learning are culminating towards devel...
International audienceAccurate and robust tumor delineation using PET images is crucial for the extr...
PublicationIn this paper we introduce an evidential multi-source segmentation scheme for the extract...
International audiencePurpose: Accurate tumor delineation in positron emission tomography (PET) imag...
Abstract. Lung cancer represents the most deadly type of malignancy. In this work we propose a machi...
Statistical imaging together with other machine learning techniques are the epitome of digitalizing...
Abstract: Tumor segmentation is one of the important steps for volume measurement of nasopharyngeal ...
PURPOSE: Accurate and robust image segmentation was identified as one of the most challenging issues...
International audienceAutomatically and reliably delineating tumor contours in noisy and blurring PE...
International audienceWhile hybrid PET/CT scanner is becoming a standard imaging technique in clinic...
International audiencePositron Emission Tomography (PET) and Computed Tomography (CT) are two modali...
Radiation therapy is one of the most principal options used in the treatment of malignant tumors. To...
International audienceAn automatic evidential segmentation method based on Dempster-Shafer theory an...
An automatic evidential segmentation method based on Dempster-Shafer theory and deep learning is pro...
International audiencePrecise delineation of target tumor is a key factor to ensure the effectivenes...
Recent developments in statistical image analysis and machine learning are culminating towards devel...
International audienceAccurate and robust tumor delineation using PET images is crucial for the extr...
PublicationIn this paper we introduce an evidential multi-source segmentation scheme for the extract...
International audiencePurpose: Accurate tumor delineation in positron emission tomography (PET) imag...
Abstract. Lung cancer represents the most deadly type of malignancy. In this work we propose a machi...
Statistical imaging together with other machine learning techniques are the epitome of digitalizing...
Abstract: Tumor segmentation is one of the important steps for volume measurement of nasopharyngeal ...
PURPOSE: Accurate and robust image segmentation was identified as one of the most challenging issues...