Deep learning methods require massive of annotated data for optimizing parameters. For example, datasets attached with accurate bounding box annotations are essential for modern object detection tasks. However, labeling with such pixel-wise accuracy is laborious and time-consuming, and elaborate labeling procedures are indispensable for reducing man-made noise, involving annotation review and acceptance testing. In this paper, we focus on the impact of noisy location annotations on the performance of object detection approaches and aim to, on the user side, reduce the adverse effect of the noise. First, noticeable performance degradation is experimentally observed for both one-stage and two-stage detectors when noise is introduced to the bo...
Applying deep learning and Convolutional Neural Network (CNN)s to new domains usually implies a data...
The growth in the amount of collected video data in the past decade necessitates automated video an...
Object detection has witnessed significant progress by relying on large, manually annotated datasets...
Label noise is a primary point of interest for safety concerns in previous works as it affects the r...
The performance of object detection has steadily improved over the past decade, primarily due to imp...
Deep learning-based object detectors have shown outstanding performance with state-of-the-art result...
The quality of training datasets for deep neural networks is a key factor contributing to the accura...
Modern convolutional neural networks (CNNs)-based face detectors have achieved tremendous strides du...
Fully-supervised object detection and instance segmentation models have accomplished notable results...
Fully supervised object detection requires training images in which all instances are annotated. Thi...
Object detection has gained great improvements with the advances of convolutional neural networks an...
A central task in computer vision is detecting object classes such as cars and horses in complex sc...
It is usually assumed that the kind of noise existing in annotated data is random clas-sification no...
Although weakly-supervised techniques can reduce the labeling effort, it is unclear whether a salien...
Object detection on aerial and satellite imagery is an important tool for image analysis in remote s...
Applying deep learning and Convolutional Neural Network (CNN)s to new domains usually implies a data...
The growth in the amount of collected video data in the past decade necessitates automated video an...
Object detection has witnessed significant progress by relying on large, manually annotated datasets...
Label noise is a primary point of interest for safety concerns in previous works as it affects the r...
The performance of object detection has steadily improved over the past decade, primarily due to imp...
Deep learning-based object detectors have shown outstanding performance with state-of-the-art result...
The quality of training datasets for deep neural networks is a key factor contributing to the accura...
Modern convolutional neural networks (CNNs)-based face detectors have achieved tremendous strides du...
Fully-supervised object detection and instance segmentation models have accomplished notable results...
Fully supervised object detection requires training images in which all instances are annotated. Thi...
Object detection has gained great improvements with the advances of convolutional neural networks an...
A central task in computer vision is detecting object classes such as cars and horses in complex sc...
It is usually assumed that the kind of noise existing in annotated data is random clas-sification no...
Although weakly-supervised techniques can reduce the labeling effort, it is unclear whether a salien...
Object detection on aerial and satellite imagery is an important tool for image analysis in remote s...
Applying deep learning and Convolutional Neural Network (CNN)s to new domains usually implies a data...
The growth in the amount of collected video data in the past decade necessitates automated video an...
Object detection has witnessed significant progress by relying on large, manually annotated datasets...