Monte Carlo DropBlock for Modelling Uncertainty in Object Detection

08/08/2021
by   Kumari Deepshikha, et al.
0

With the advancements made in deep learning, computer vision problems like object detection and segmentation have seen a great improvement in performance. However, in many real-world applications such as autonomous driving vehicles, the risk associated with incorrect predictions of objects is very high. Standard deep learning models for object detection such as YOLO models are often overconfident in their predictions and do not take into account the uncertainty in predictions on out-of-distribution data. In this work, we propose an efficient and effective approach to model uncertainty in object detection and segmentation tasks using Monte-Carlo DropBlock (MC-DropBlock) based inference. The proposed approach applies drop-block during training time and test time on the convolutional layer of the deep learning models such as YOLO. We show that this leads to a Bayesian convolutional neural network capable of capturing the epistemic uncertainty in the model. Additionally, we capture the aleatoric uncertainty using a Gaussian likelihood. We demonstrate the effectiveness of the proposed approach on modeling uncertainty in object detection and segmentation tasks using out-of-distribution experiments. Experimental results show that MC-DropBlock improves the generalization, calibration, and uncertainty modeling capabilities of YOLO models in object detection and segmentation.

READ FULL TEXT

page 2

page 14

research
06/28/2021

An Uncertainty Estimation Framework for Probabilistic Object Detection

In this paper, we introduce a new technique that combines two popular me...
research
09/07/2020

Stochastic-YOLO: Efficient Probabilistic Object Detection under Dataset Shifts

In image classification tasks, the evaluation of models' robustness to i...
research
08/02/2021

Towards Robust Object Detection: Bayesian RetinaNet for Homoscedastic Aleatoric Uncertainty Modeling

According to recent studies, commonly used computer vision datasets cont...
research
02/14/2023

B-BACN: Bayesian Boundary-Aware Convolutional Network for Crack Characterization

The accurate detection of crack boundaries is crucial for various purpos...
research
04/21/2021

A Fully Spiking Hybrid Neural Network for Energy-Efficient Object Detection

This paper proposes a Fully Spiking Hybrid Neural Network (FSHNN) for en...
research
08/29/2022

Confidence Estimation for Object Detection in Document Images

Deep neural networks are becoming increasingly powerful and large and al...
research
09/26/2016

Optimistic and Pessimistic Neural Networks for Scene and Object Recognition

In this paper the application of uncertainty modeling to convolutional n...

Please sign up or login with your details

Forgot password? Click here to reset