Haalck Lars, Risse Benjamin
Forschungsartikel in Sammelband (Konferenz) | Peer reviewedDense registrations of huge image sets are still challeng- ing due to exhaustive matchings and computationally expensive optimisations. Moreover, the resultant image mo- saics often suffer from structural errors such as drift. Here, we propose a novel algorithm to generate global large-scale registrations from thousands of images extracted from multiple videos to derive high-resolution image mosaics which include full frame rate camera trajectories. Our algorithm does not require any initialisations and ensures the effective integration of all available image data by combining efficient and highly parallelised key-frame and loop-closure mechanisms with a novel geodesic interpolation-based rein- tegration strategy. As a consequence, global refinement can be done in a fraction of iterations compared to tra- ditional optimisation strategies, while effectively avoiding drift and convergence towards inappropriate solutions. We compared our registration strategy with state-of-the-art al- gorithms and quantitative evaluations revealed millimetre spatial and high angular accuracy. Applicability is demonstrated by registering more than 110,000 frames from multiple scan recordings and provide dense camera trajectories in a globally referenced coordinate system as used for drone-based mappings, ecological studies, object tracking and land surveys.
Haalck, Lars | Institut für Informatik |
Risse, Benjamin | Juniorprofessur für Praktische Informatik (Prof. Risse) |