Deep Learning-Based Depth Estimation Models with Monocular SLAM : Impacts of Pure Rotational Movements on Scale Drift and Robustness

Detta är en Master-uppsats från Linköpings universitet/Datorseende

Sammanfattning: This thesis explores the integration of deep learning-based depth estimation models with the ORB-SLAM3 framework to address challenges in monocular Simultaneous Localization and Mapping (SLAM), particularly focusing on pure rotational movements. The study investigates the viability of using pre-trained generic depth estimation networks, and hybrid combinations of these networks, to replace traditional depth sensors and improve scale accuracy in SLAM systems. A series of experiments are conducted outdoors, utilizing a custom camera setup designed to isolate pure rotational movements. The analysis involves assessing each model's impact on the SLAM process as well as performance indicators (KPIs) on both depth estimation and 3D tracking. Results indicate a correlation between depth estimation accuracy and SLAM performance, underscoring the potential of depth estimation models in enhancing SLAM systems. The findings contribute to the understanding of the role of monocular depth estimation in integrating with SLAM, especially in applications requiring precise spatial awareness for augmented reality.

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