Feature misalignment in object detection refers to
the phenomenon that features which re up in some
positive detection windows do not re up in other pos-
itive detection windows. Most often it is caused by
pose variation and local part deformation. Previous
work either totally ignores this issue, or naively per-
forms a local exhaustive search to better position each
feature. We propose a learning framework to mitigate
this problem, where a boosting algorithm is performed
to seed the position of the object part, and a multiple
instance boosting algorithm further pursues an aggre-
gated feature for this part, namely multiple instance
feature. Unlike most previous boosting based object de-
tectors, where each feature value produces a single clas-
sication result, the value of the proposed multiple in-
stance feature is the Noisy-OR integration of a bag of
classication results. Our approach is applied to the
task of human detection and is tested on two popular
benchm...