Dropout Variational Inference, or Dropout Sampling, has been recently proposed as an approximation technique for Bayesian Deep Learning and evaluated for image classification and regression tasks. This paper investigates the utility of Dropout Sampling for object detection for the first time. We demonstrate how label uncertainty can be extracted from a state-of-the-art object detection system via Dropout Sampling. We evaluate this approach on a large synthetic dataset of 30,000 images, and a real-world dataset captured by a mobile robot in a versatile campus environment. We show that this uncertainty can be utilized to increase object detection performance under the open-set conditions that are typically encountered in robotic vision. A Dro...
Uncertainty estimation for machine learning models is of high importance in many scenarios such as c...
Due to lack of data, overfitting ubiquitously exists in real-world applications of deep neural netwo...
Deep learning models are extensively used in various safety critical applications. Hence these model...
Dropout Variational Inference, or Dropout Sampling, has been recently proposed as an approximation t...
Dropout is used as a practical tool to obtain uncertainty estimates in large vision models and reinf...
This paper provides the first benchmark for sampling-based probabilistic object detectors. A probabi...
Deep learning tools have gained tremendous attention in applied machine learning. However such tools...
To obtain uncertainty estimates with real-world Bayesian deep learning models, practical inference a...
We introduce Probabilistic Object Detection, the task of detecting objects in images and accurately ...
There has been a recent emergence of samplingbased techniques for estimating epistemic uncertainty i...
Dropout has been witnessed with great success in training deep neural networks by independently zero...
Object detection is a robot perception task that requires classifying objects in the scene into one ...
Deployed into an open world, object detectors are prone to open-set errors, false positive detection...
© 2012 IEEE. Dropout has been proven to be an effective algorithm for training robust deep networks ...
For safety and mission critical systems relying on Convolutional Neural Networks (CNNs), it is cruci...
Uncertainty estimation for machine learning models is of high importance in many scenarios such as c...
Due to lack of data, overfitting ubiquitously exists in real-world applications of deep neural netwo...
Deep learning models are extensively used in various safety critical applications. Hence these model...
Dropout Variational Inference, or Dropout Sampling, has been recently proposed as an approximation t...
Dropout is used as a practical tool to obtain uncertainty estimates in large vision models and reinf...
This paper provides the first benchmark for sampling-based probabilistic object detectors. A probabi...
Deep learning tools have gained tremendous attention in applied machine learning. However such tools...
To obtain uncertainty estimates with real-world Bayesian deep learning models, practical inference a...
We introduce Probabilistic Object Detection, the task of detecting objects in images and accurately ...
There has been a recent emergence of samplingbased techniques for estimating epistemic uncertainty i...
Dropout has been witnessed with great success in training deep neural networks by independently zero...
Object detection is a robot perception task that requires classifying objects in the scene into one ...
Deployed into an open world, object detectors are prone to open-set errors, false positive detection...
© 2012 IEEE. Dropout has been proven to be an effective algorithm for training robust deep networks ...
For safety and mission critical systems relying on Convolutional Neural Networks (CNNs), it is cruci...
Uncertainty estimation for machine learning models is of high importance in many scenarios such as c...
Due to lack of data, overfitting ubiquitously exists in real-world applications of deep neural netwo...
Deep learning models are extensively used in various safety critical applications. Hence these model...