Title :
Multi-modal sensor registration for vehicle perception via deep neural networks
Author :
Michael Giering;Vivek Venugopalan;Kishore Reddy
Author_Institution :
United Technologies Research Center, E. Hartford, CT 06018, USA
Abstract :
The ability to simultaneously leverage multiple modes of sensor information is critical for perception of an automated vehicle´s physical surroundings. Spatio-temporal alignment of registration of the incoming information is often a prerequisite to analyzing the fused data. The persistence and reliability of multi-modal registration is therefore the key to the stability of decision support systems ingesting the fused information. LiDAR-video systems like on those many driverless cars are a common example of where keeping the LiDAR and video channels registered to common physical features is important. We develop a deep learning method that takes multiple channels of heterogeneous data, to detect the misalignment of the LiDAR-video inputs. A number of variations were tested on the Ford LiDAR-video driving test data set and will be discussed. To the best of our knowledge the use of multi-modal deep convolutional neural networks for dynamic real-time LiDAR-video registration has not been presented.
Keywords :
"Laser radar","Optical imaging","Optical sensors","Accuracy","Testing","Three-dimensional displays","Training"
Conference_Titel :
High Performance Extreme Computing Conference (HPEC), 2015 IEEE
DOI :
10.1109/HPEC.2015.7322485