TY - GEN
T1 - Probabilistic analysis of incremental light bundle adjustment
AU - Indelman, Vadim
AU - Roberts, Richard
AU - Dellaert, Frank
PY - 2013
Y1 - 2013
N2 - This paper presents a probabilistic analysis of the recently introduced incremental light bundle adjustment method (iLBA) [6]. In iLBA, the observed 3D points are algebraically eliminated, resulting in a cost function with only the camera poses as variables, and an incremental smoothing technique is applied for efficiently processing incoming images. While we have already showed that compared to conventional bundle adjustment (BA), iLBA yields a significant improvement in computational complexity with similar levels of accuracy, the probabilistic properties of iLBA have not been analyzed thus far. In this paper we consider the probability distribution that corresponds to the iLBA cost function, and analyze how well it represents the true density of the camera poses given the image measurements. The latter can be exactly calculated in bundle adjustment (BA) by marginalizing out the 3D points from the joint distribution of camera poses and 3D points. We present a theoretical analysis of the differences in the way that LBA and BA use measurement information. Using indoor and outdoor datasets we show that the first two moments of the iLBA and the true probability distributions are very similar in practice.
AB - This paper presents a probabilistic analysis of the recently introduced incremental light bundle adjustment method (iLBA) [6]. In iLBA, the observed 3D points are algebraically eliminated, resulting in a cost function with only the camera poses as variables, and an incremental smoothing technique is applied for efficiently processing incoming images. While we have already showed that compared to conventional bundle adjustment (BA), iLBA yields a significant improvement in computational complexity with similar levels of accuracy, the probabilistic properties of iLBA have not been analyzed thus far. In this paper we consider the probability distribution that corresponds to the iLBA cost function, and analyze how well it represents the true density of the camera poses given the image measurements. The latter can be exactly calculated in bundle adjustment (BA) by marginalizing out the 3D points from the joint distribution of camera poses and 3D points. We present a theoretical analysis of the differences in the way that LBA and BA use measurement information. Using indoor and outdoor datasets we show that the first two moments of the iLBA and the true probability distributions are very similar in practice.
UR - http://www.scopus.com/inward/record.url?scp=84880284463&partnerID=8YFLogxK
U2 - 10.1109/WORV.2013.6521942
DO - 10.1109/WORV.2013.6521942
M3 - منشور من مؤتمر
SN - 9781467356466
T3 - 2013 IEEE Workshop on Robot Vision, WORV 2013
SP - 221
EP - 228
BT - 2013 IEEE Workshop on Robot Vision, WORV 2013
T2 - 2013 IEEE Workshop on Robot Vision, WORV 2013
Y2 - 15 January 2013 through 17 January 2013
ER -