The Structure from Motion (SfM) challenge in computer vision is the process
of recovering the 3D structure of a scene from a series of projective
measurements that are calculated from a collection of 2D images, taken from
different perspectives. SfM consists of three main steps; feature detection and
matching, camera motion estimation, and recovery of 3D structure from estimated
intrinsic and extrinsic parameters and features.
A problem encountered in SfM is that scenes lacking texture or with
repetitive features can cause erroneous feature matching between frames.
Semantic segmentation offers a route to validate and correct SfM models by
labelling pixels in the input images with the use of a deep convolutional
neural network. The semantic and geometric properties associated with classes
in the scene can be taken advantage of to apply prior constraints to each class
of object. The SfM pipeline COLMAP and semantic segmentation pipeline DeepLab
were used. This, along with planar reconstruction of the dense model, were used
to determine erroneous points that may be occluded from the calculated camera
position, given the semantic label, and thus prior constraint of the
reconstructed plane. Herein, semantic segmentation is integrated into SfM to
apply priors on the 3D point cloud, given the object detection in the 2D input
images. Additionally, the semantic labels of matched keypoints are compared and
inconsistent semantically labelled points discarded. Furthermore, semantic
labels on input images are used for the removal of objects associated with
motion in the output SfM models. The proposed approach is evaluated on a
data-set of 1102 images of a repetitive architecture scene. This project offers
a novel method for improved validation of 3D SfM models