It is a common paradigm in object detection frameworks that the samples in training and testing have consistent distributions for the two main tasks: Classification and bounding box regression. This paradigm is popular in sampling strategy for training an object detector due to its intuition and practicability. For the task of localization quality estimation, there exist two ways of sampling: The same sampling with the main tasks and the uniform sampling by manually augmenting the ground-truth. The first method of sampling is simple but inconsistent for the task of quality estimation. The second method of uniform sampling contains all IoU level distributions but is more complex and difficult for training. In this paper, we propose an H+L-Sa...
Label assignment plays a significant role in modern object detection models. Detection models may yi...
Weakly supervised object localization (WSOL) tasks aim to classify and locate a single object under ...
Two factors define the success of a deep neural network (DNN) based application; the training data a...
Accurate object detection requires correct classification and high-quality localization. Currently, ...
The localization quality of automatic object detectors is typically evaluated by the Intersection ov...
Accurately ranking the vast number of candidate detections is crucial for dense object detectors to ...
This paper provides the first benchmark for sampling-based probabilistic object detectors. A probabi...
Abstract. Standard sliding window based object detection requires dense classifier evaluation on den...
Previous knowledge distillation (KD) methods for object detection mostly focus on feature imitation ...
Nowadays, Semi-Supervised Object Detection (SSOD) is a hot topic, since, while it is rather easy to ...
Abstract. Standard sliding window based object detection requires dense clas-sifier evaluation on de...
Most of the recent research in semi-supervised object detection follows the pseudo-labeling paradigm...
Object detectors are conventionally trained by a weighted sum of classification and localization los...
MasterObject detection aims to locate and classify object instances in images. Therefore, the object...
International audienceMost deep learning object detectors are based on the anchor mechanism and reso...
Label assignment plays a significant role in modern object detection models. Detection models may yi...
Weakly supervised object localization (WSOL) tasks aim to classify and locate a single object under ...
Two factors define the success of a deep neural network (DNN) based application; the training data a...
Accurate object detection requires correct classification and high-quality localization. Currently, ...
The localization quality of automatic object detectors is typically evaluated by the Intersection ov...
Accurately ranking the vast number of candidate detections is crucial for dense object detectors to ...
This paper provides the first benchmark for sampling-based probabilistic object detectors. A probabi...
Abstract. Standard sliding window based object detection requires dense classifier evaluation on den...
Previous knowledge distillation (KD) methods for object detection mostly focus on feature imitation ...
Nowadays, Semi-Supervised Object Detection (SSOD) is a hot topic, since, while it is rather easy to ...
Abstract. Standard sliding window based object detection requires dense clas-sifier evaluation on de...
Most of the recent research in semi-supervised object detection follows the pseudo-labeling paradigm...
Object detectors are conventionally trained by a weighted sum of classification and localization los...
MasterObject detection aims to locate and classify object instances in images. Therefore, the object...
International audienceMost deep learning object detectors are based on the anchor mechanism and reso...
Label assignment plays a significant role in modern object detection models. Detection models may yi...
Weakly supervised object localization (WSOL) tasks aim to classify and locate a single object under ...
Two factors define the success of a deep neural network (DNN) based application; the training data a...