When applying transfer learning for medical image analysis, downstream tasks often have significant gaps with the pre-training tasks. Previous methods mainly focus on improving the transferabilities of the pre-trained models to bridge the gaps. In fact, model fine-tuning can also play a very important role in tackling this problem. A conventional fine-tuning method is updating all deep neural networks (DNNs) layers by a single learning rate (LR), which ignores the unique transferabilities of different layers. In this work, we explore the behaviors of different layers in the fine-tuning stage. More precisely, we first hypothesize that lower-level layers are more domain-specific while higher-level layers are more task-specific, which is verif...
Transfer-learning has rapidly become one of the most sophisticated and effective techniques in deali...
The standard training for deep neural networks relies on a global and fixed loss function. For more ...
International audienceFine-tuning pre-trained deep networks is a practical way of benefiting from th...
Parameter fine tuning is a transfer learning approach whereby learned parameters from pre-trained so...
Over the past decade, the field of machine learning has experienced remarkable advancements. While i...
The performance of conventional deep neural networks tends to degrade when a domain shift is introdu...
Transfer learning (TL) from pretrained deep models is a standard practice in modern medical image cl...
This paper proposes an efficient domain adaption approach using deep learning along with transfer a...
Multi-Stage Transfer Learning (MSTL) has been becoming a very promising area of research in the fiel...
Clinical deployment of systems based on deep neural networks is hampered by sensitivity to domain sh...
Abstract. Typical cohorts in brain imaging studies are not large enough for systematic testing of al...
Recently, the healthcare industry is in a dynamic transformation accelerated by the availability of ...
MasterDeep learning has been tremendously successful in many difficult tasks including image classi...
In recent years, a ton of research has been conducted on real image denoising tasks. However, the ef...
Fine-tuning is a popular way of exploiting knowledge contained in a pre-trained convolutional networ...
Transfer-learning has rapidly become one of the most sophisticated and effective techniques in deali...
The standard training for deep neural networks relies on a global and fixed loss function. For more ...
International audienceFine-tuning pre-trained deep networks is a practical way of benefiting from th...
Parameter fine tuning is a transfer learning approach whereby learned parameters from pre-trained so...
Over the past decade, the field of machine learning has experienced remarkable advancements. While i...
The performance of conventional deep neural networks tends to degrade when a domain shift is introdu...
Transfer learning (TL) from pretrained deep models is a standard practice in modern medical image cl...
This paper proposes an efficient domain adaption approach using deep learning along with transfer a...
Multi-Stage Transfer Learning (MSTL) has been becoming a very promising area of research in the fiel...
Clinical deployment of systems based on deep neural networks is hampered by sensitivity to domain sh...
Abstract. Typical cohorts in brain imaging studies are not large enough for systematic testing of al...
Recently, the healthcare industry is in a dynamic transformation accelerated by the availability of ...
MasterDeep learning has been tremendously successful in many difficult tasks including image classi...
In recent years, a ton of research has been conducted on real image denoising tasks. However, the ef...
Fine-tuning is a popular way of exploiting knowledge contained in a pre-trained convolutional networ...
Transfer-learning has rapidly become one of the most sophisticated and effective techniques in deali...
The standard training for deep neural networks relies on a global and fixed loss function. For more ...
International audienceFine-tuning pre-trained deep networks is a practical way of benefiting from th...