This paper proposes a deep learning framework for decreasing large-scale domain shift problems in object detection using domain adaptation techniques. We have approached data-centric domain adaptation with Image-to-Image translation models for this problem. It is one of the methodologies that changes source data to target domain's style by reducing domain shift. However, the method cannot be applied directly to the domain adaptation task because the existing Image-to-Image model focuses on style translation. We solved this problem using the data-centric approach simply by reordering the training sequence of the domain adaptation model. We defined the features to be content and style. We hypothesized that object-specific information in image...
This book provides a survey of deep learning approaches to domain adaptation in computer vision. It ...
The object detection task usually assumes that the training and test samples obey the same distribut...
This thesis addresses a critical problem in computer vision of dealing with dataset bias between sou...
This paper proposes a deep learning framework for decreasing large-scale domain shift problems in ob...
Source-free object detection (SFOD) needs to adapt a detector pre-trained on a labeled source domain...
We study the use of domain adaptation and transfer learning techniques as part of a framework for ad...
When humans learn new knowledge and skills, we can naturally transfer them to other domains. Along w...
Data is the main constraint when training Deep Learning models. Real-domain data is costly to annot...
Over the last several years it has been shown that image-based object detectors are sensitive to the...
The advent of deep convolutional networks has powered a new wave of progress in visual recognition. ...
Cross-domain object detection is more challenging than object classification since multiple objects ...
One of the main limitations of artificial intelligence today is its inability to adapt to unforeseen...
Together with the development of deep neural networks, artificial intelligence is getting unpreceden...
Images seen during test time are often not from the same distribution as images used for learning. T...
In visual recognition problems, the common data distribution mismatches between training and testing...
This book provides a survey of deep learning approaches to domain adaptation in computer vision. It ...
The object detection task usually assumes that the training and test samples obey the same distribut...
This thesis addresses a critical problem in computer vision of dealing with dataset bias between sou...
This paper proposes a deep learning framework for decreasing large-scale domain shift problems in ob...
Source-free object detection (SFOD) needs to adapt a detector pre-trained on a labeled source domain...
We study the use of domain adaptation and transfer learning techniques as part of a framework for ad...
When humans learn new knowledge and skills, we can naturally transfer them to other domains. Along w...
Data is the main constraint when training Deep Learning models. Real-domain data is costly to annot...
Over the last several years it has been shown that image-based object detectors are sensitive to the...
The advent of deep convolutional networks has powered a new wave of progress in visual recognition. ...
Cross-domain object detection is more challenging than object classification since multiple objects ...
One of the main limitations of artificial intelligence today is its inability to adapt to unforeseen...
Together with the development of deep neural networks, artificial intelligence is getting unpreceden...
Images seen during test time are often not from the same distribution as images used for learning. T...
In visual recognition problems, the common data distribution mismatches between training and testing...
This book provides a survey of deep learning approaches to domain adaptation in computer vision. It ...
The object detection task usually assumes that the training and test samples obey the same distribut...
This thesis addresses a critical problem in computer vision of dealing with dataset bias between sou...