Interest point detectors stability evaluation on ApolloScape dataset

Repeatability of FAST, Saddler and Superpoint keypoints on objects with different semantic labels

Abstract

In the recent years, a number of novel, deep-learning based, interest point detectors, such as LIFT, DELF, Superpoint or LF-Net was proposed. However there’s a lack of a standard benchmark to evaluate suitability of these novel keypoint detectors for real-live applications such as autonomous driving. Traditional benchmarks (e.g. Oxford VGG) are rather limited, as they consist of relatively few images of mostly planar scenes taken in favourable conditions. In this paper we verify if the recent, deep-learning based interest point detectors have the advantage over the traditional, hand-crafted keypoint detectors. To this end, we evaluate stability of a number of hand crafted and recent, learning-based interest point detectors on the street-level view ApolloScape dataset.

Publication
In *Proceedings of the European Conference on Computer Vision 2018, Workshop on ApolloScape: Vision-based Navigation for Autonomous Driving
Jacek Komorowski
Jacek Komorowski
Assistant Professor
Tomasz Trzciński
Tomasz Trzciński
Principal Investigator

Related