Deep CNN-based object detection systems have achieved remarkable success on several large-scale object detection benchmarks. However, training such detectors requires a large number of labeled bounding boxes, which are more difficult to obtain than image-level annotations. Previous work addresses this issue by transforming image-level classifiers into object detectors. This is done by modeling the differences between the two on categories with both image-level and bounding box annotations, and transferring this information to convert classifiers to detectors for categories without bounding box annotations. We improve this previous work by incorporating knowledge about object similarities from visual and semantic domains during the transfer ...
International audienceWe propose an object detection system that relies on a multi-region deep convo...
When the training data is inadequate, it is difficult to train a deep Convolutional Neural Network (...
In this dissertation we address the problem of weakly supervised object detection, wherein the goal ...
International audienceDeep CNN-based object detection systems have achieved remarkable success on se...
Deep CNN-based object detection systems have achieved remarkable success on several large-scale obje...
Deep CNN-based object detection systems have achieved remarkable success on several large-scale obj...
More and more datasets have increased their size with enough class annotations. Although the classif...
Object recognition is important to understand the content of video and allow flexible querying in a ...
Thesis (Ph.D.)--University of Washington, 2019Deep Neural Networks (DNNs) have played a major role i...
Visual recognition is a problem of significant interest in computer vision. The current solution to ...
Object category detection, the task of determining if one or more instances of a category are presen...
When humans learn new knowledge and skills, we can naturally transfer them to other domains. Along w...
The dominant object detection approaches treat each dataset separately and fit towards a specific do...
This paper investigates the usage of pre-trained deep learning neural networks for object detection ...
We study the problem of object classification when training and test classes are disjoint, i.e. no t...
International audienceWe propose an object detection system that relies on a multi-region deep convo...
When the training data is inadequate, it is difficult to train a deep Convolutional Neural Network (...
In this dissertation we address the problem of weakly supervised object detection, wherein the goal ...
International audienceDeep CNN-based object detection systems have achieved remarkable success on se...
Deep CNN-based object detection systems have achieved remarkable success on several large-scale obje...
Deep CNN-based object detection systems have achieved remarkable success on several large-scale obj...
More and more datasets have increased their size with enough class annotations. Although the classif...
Object recognition is important to understand the content of video and allow flexible querying in a ...
Thesis (Ph.D.)--University of Washington, 2019Deep Neural Networks (DNNs) have played a major role i...
Visual recognition is a problem of significant interest in computer vision. The current solution to ...
Object category detection, the task of determining if one or more instances of a category are presen...
When humans learn new knowledge and skills, we can naturally transfer them to other domains. Along w...
The dominant object detection approaches treat each dataset separately and fit towards a specific do...
This paper investigates the usage of pre-trained deep learning neural networks for object detection ...
We study the problem of object classification when training and test classes are disjoint, i.e. no t...
International audienceWe propose an object detection system that relies on a multi-region deep convo...
When the training data is inadequate, it is difficult to train a deep Convolutional Neural Network (...
In this dissertation we address the problem of weakly supervised object detection, wherein the goal ...