TL;DR
This paper introduces Bit-Planes, a binary feature descriptor integrated into direct visual odometry, enhancing robustness to lighting changes and low-texture conditions by combining feature-based and direct methods.
Contribution
The work presents a novel binary descriptor, Bit-Planes, that enables direct VSLAM to handle photometric variations efficiently using least squares optimization.
Findings
Robust performance in poorly lit underground environments
Bit-Planes descriptor is computationally efficient
Equivalent to Hamming distance for fast matching
Abstract
Feature descriptors, such as SIFT and ORB, are well-known for their robustness to illumination changes, which has made them popular for feature-based VSLAM\@. However, in degraded imaging conditions such as low light, low texture, blur and specular reflections, feature extraction is often unreliable. In contrast, direct VSLAM methods which estimate the camera pose by minimizing the photometric error using raw pixel intensities are often more robust to low textured environments and blur. Nonetheless, at the core of direct VSLAM is the reliance on a consistent photometric appearance across images, otherwise known as the brightness constancy assumption. Unfortunately, brightness constancy seldom holds in real world applications. In this work, we overcome brightness constancy by incorporating feature descriptors into a direct visual odometry framework. This combination results in an…
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