2021
DOI: 10.48550/arxiv.2106.14474
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False Negative Reduction in Video Instance Segmentation using Uncertainty Estimates

Abstract: Instance segmentation of images is an important tool for automated scene understanding. Neural networks are usually trained to optimize their overall performance in terms of accuracy. Meanwhile, in applications such as automated driving, an overlooked pedestrian seems more harmful than a falsely detected one. In this work, we present a false negative detection method for image sequences based on inconsistencies in time series of tracked instances given the availability of image sequences in online applications… Show more

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