This work explores the performance of state-of-the-art semantic segmentation models on mammographic imagery. It does so by comparing several reference semantic segmentation deep learning models on a newly proposed medical dataset of mammograpgy screenings. All models are re-implemented in Tensorflow and validated first on the benchmark dataset Cityscapes. The new medical image corpus was gathered and annotated at the Science for Life Laboratory in Stockholm. In addition, this master thesis shows that it is possible to boost segmentation performance by training the models in an adversarial manner after reaching convergence in the classical training framework.Denna uppsats undersöker hur väl moderna metoder presterar på semantisk segmentering...
Semantic Image Segmentation is a field within machine learning and computer vision, where the goal i...
We present an integrated methodology for detecting, segmenting and classifying breast masses from ma...
In recent years, image segmentation by using deep neural networks has made great progress. However, ...
This work explores the performance of state-of-the-art semantic segmentation models on mammographic ...
In Sweden, women of age between of 40 and 74 go through regular screening of their breasts every 18-...
Breast segmentation plays a vital role in the automatic analysis of mammograms. Accurate segmentatio...
Segmentation of mammograms pertains to assigning a meaningful label to each pixel found in the image...
Breast cancer is the most common form of cancer among women, with around 9000 new diagnoses in Swede...
Mammographic screenings are the most common modality for an early detection of breast cancer, but a ...
Breast cancer is the most common and deadly cancer in women worldwide. Early detection is crucial fo...
In this paper, we present a novel method for the segmentation of breast masses from mammograms explo...
Accurate segmentation of anatomical structures is crucial for radiation therapy in cancer treatment....
In this chapter, we show two discoveries learned from the application of deep learning methods to th...
The image semantic segmentation challenge consists of classifying each pixel of an image (or just se...
Mammography screenings are performed regularly on women in order to detect early signs of breast can...
Semantic Image Segmentation is a field within machine learning and computer vision, where the goal i...
We present an integrated methodology for detecting, segmenting and classifying breast masses from ma...
In recent years, image segmentation by using deep neural networks has made great progress. However, ...
This work explores the performance of state-of-the-art semantic segmentation models on mammographic ...
In Sweden, women of age between of 40 and 74 go through regular screening of their breasts every 18-...
Breast segmentation plays a vital role in the automatic analysis of mammograms. Accurate segmentatio...
Segmentation of mammograms pertains to assigning a meaningful label to each pixel found in the image...
Breast cancer is the most common form of cancer among women, with around 9000 new diagnoses in Swede...
Mammographic screenings are the most common modality for an early detection of breast cancer, but a ...
Breast cancer is the most common and deadly cancer in women worldwide. Early detection is crucial fo...
In this paper, we present a novel method for the segmentation of breast masses from mammograms explo...
Accurate segmentation of anatomical structures is crucial for radiation therapy in cancer treatment....
In this chapter, we show two discoveries learned from the application of deep learning methods to th...
The image semantic segmentation challenge consists of classifying each pixel of an image (or just se...
Mammography screenings are performed regularly on women in order to detect early signs of breast can...
Semantic Image Segmentation is a field within machine learning and computer vision, where the goal i...
We present an integrated methodology for detecting, segmenting and classifying breast masses from ma...
In recent years, image segmentation by using deep neural networks has made great progress. However, ...