Sciweavers

ARCS
2014
Springer

Resource-Aware Harris Corner Detection Based on Adaptive Pruning

9 years 2 months ago
Resource-Aware Harris Corner Detection Based on Adaptive Pruning
Corner-detection techniques are being widely used in computer vision – for example in object recognition to find suitable candidate points for feature registration and matching. Most computer-vision applications have to operate on real-time video sequences, hence maintaining a consistent throughput and high accuracy are important constrains that ensure high-quality object recognition. A high throughput can be achieved by exploiting the inherent parallelism within the algorithm on massively parallel architectures like many-core processors. However, accelerating such algorithms on many-core CPUs offers several challenges as the achieved speedup depends on the instantaneous load on the processing elements. In this work, we present a new resource-aware Harris corner-detection algorithm for many-core processors. The novel algorithm can adapt itself to the dynamically varying load on a many-core processor to process the frame within a predefined time interval. The results show a 19% impr...
Johny Paul, Walter Stechele, Manfred Kröhnert
Added 19 May 2015
Updated 19 May 2015
Type Journal
Year 2014
Where ARCS
Authors Johny Paul, Walter Stechele, Manfred Kröhnert, Tamim Asfour, Benjamin Oechslein, Christoph Erhardt, Jens Schedel, Daniel Lohmann, Wolfgang Schröder-Preikschat
Comments (0)