Karlo Koledić
Karlo Koledić
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GVDepth: Zero-Shot Monocular Depth Estimation for Ground Vehicles based on Probabilistic Cue Fusion
GVDepth leverages novel canonical representation to
disentangle depth from camera parameters
, ensuring consistency across diverse camera setups. Depth is estimated via
probabilistic fusion of intermediate representations
stemming from object size and vertical position cues, achieving accurate and generalizable predictions across multiple datasets and camera configurations. Notably, GVDepth achieves accuracy comparable to SotA zero-shot methods, while
training with a single dataset
collected with a single camera setup.
Karlo Koledić
,
Luka Petrović
,
Ivan Petrović
,
Ivan Marković
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Project
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DOI
Towards Camera Parameters Invariant Monocular Depth Estimation in Autonomous Driving
Self-attention-based approach for Monocular Depth Estimation integrates novel
camera parameter embeddings
to improve accuracy and generalization across varying vehicle-camera setups, supported by a
new dataset
from the CARLA simulator with diverse camera configurations.
Karlo Koledić
,
Ivan Marković
,
Ivan Petrović
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Dataset
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DOI
MOFT: Monocular odometry based on deep depth and careful feature selection and tracking
A lightweight monocular odometry method that
combines deep depth predictions with a feature-based geometrical framework
, achieving metrically scaled trajectories, state-of-the-art accuracy, and robust generalization across different camera setups, as demonstrated on KITTI and KITTI-360 datasets.
Karlo Koledić
,
Igor Cvišić
,
Ivan Marković
,
Ivan Petrović
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