TL;DR
MetaDetect introduces a post-processing approach that provides reliable uncertainty and quality estimates for object detection, significantly improving over baseline methods by learning from structured metrics.
Contribution
It presents a novel post-processing method that learns uncertainty and quality estimates for object detection, enhancing reliability without retraining the base neural networks.
Findings
Achieves up to 98.92% accuracy in meta classification
Attains up to 99.93% AUROC in uncertainty estimation
R^2 of 91.78% in quality prediction
Abstract
In object detection with deep neural networks, the box-wise objectness score tends to be overconfident, sometimes even indicating high confidence in presence of inaccurate predictions. Hence, the reliability of the prediction and therefore reliable uncertainties are of highest interest. In this work, we present a post processing method that for any given neural network provides predictive uncertainty estimates and quality estimates. These estimates are learned by a post processing model that receives as input a hand-crafted set of transparent metrics in form of a structured dataset. Therefrom, we learn two tasks for predicted bounding boxes. We discriminate between true positives () and false positives () which we term meta classification, and we predict values directly which we term meta regression. The probabilities of the meta…
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Taxonomy
MethodsAverage Pooling · Batch Normalization · Global Average Pooling · Logistic Regression · k-Means Clustering · Softmax · Residual Connection · Convolution · 1x1 Convolution · BNB Customer Service Number +1-833-534-1729
