Over the last several years it has been shown that image-based object detectors are sensitive to the training data and often fail to generalize to examples that fall outside the original training sample domain (e.g., videos). A number of domain adaptation (DA) techniques have been proposed to address this problem. DA approaches are designed to adapt a fixed complexity model to the new (e.g., video) domain. We posit that unlabeled data should not only allow adaptation, but also improve (or at least maintain) performance on the original and other domains by dynamically adjusting model complexity and parameters. We call this notion domain expansion. To this end, we develop a new scalable and accurate incremental object detection algorithm, bas...
The problem of object detection deals with determining whether an instance of a given class of objec...
We propose a novel approach to boost the performance of generic object detectors on videos by learni...
This thesis concerns the problem of object detection, which is defined as finding all instances of a...
2014-10-14Object detection is a challenging problem in Computer Vision. With increasing use of socia...
International audienceObject detectors are typically trained on a large set of still images annotate...
Object detectors are typically trained on a large set of still images annotated by bounding-boxes. T...
Object recognition and localization are important to automatically interpret video and allow better ...
Object recognition and localization are important to automatically interpret video and allow better ...
In this work, we present a novel and efficient detector adaptation method which improves the perform...
Learning to understand the visual context in images or videos is a challenging task in computer visi...
This paper proposes a deep learning framework for decreasing large-scale domain shift problems in ob...
We provide a set of generic modifications to improve the execution efficiency of single-shot object ...
We present a novel approach to automatically create ef-ficient and accurate object detectors tailore...
In many computer vision tasks, scene changes hinder the generalization ability of trained classifier...
The rise of deep learning has facilitated remarkable progress in video understanding. This thesis ad...
The problem of object detection deals with determining whether an instance of a given class of objec...
We propose a novel approach to boost the performance of generic object detectors on videos by learni...
This thesis concerns the problem of object detection, which is defined as finding all instances of a...
2014-10-14Object detection is a challenging problem in Computer Vision. With increasing use of socia...
International audienceObject detectors are typically trained on a large set of still images annotate...
Object detectors are typically trained on a large set of still images annotated by bounding-boxes. T...
Object recognition and localization are important to automatically interpret video and allow better ...
Object recognition and localization are important to automatically interpret video and allow better ...
In this work, we present a novel and efficient detector adaptation method which improves the perform...
Learning to understand the visual context in images or videos is a challenging task in computer visi...
This paper proposes a deep learning framework for decreasing large-scale domain shift problems in ob...
We provide a set of generic modifications to improve the execution efficiency of single-shot object ...
We present a novel approach to automatically create ef-ficient and accurate object detectors tailore...
In many computer vision tasks, scene changes hinder the generalization ability of trained classifier...
The rise of deep learning has facilitated remarkable progress in video understanding. This thesis ad...
The problem of object detection deals with determining whether an instance of a given class of objec...
We propose a novel approach to boost the performance of generic object detectors on videos by learni...
This thesis concerns the problem of object detection, which is defined as finding all instances of a...