Towards Over-Canopy Autonomous Navigation: Crop-Agnostic LiDAR-Based Crop-Row Detection in Arable Fields
Ruiji Liu, Francisco Yandun, George Kantor

TL;DR
This paper presents a LiDAR-based autonomous navigation system for agriculture that detects crop rows across various conditions without GPS, enabling reliable, crop-agnostic field navigation even when canopies block inter-row visibility.
Contribution
The paper introduces a novel LiDAR-based crop-row detection algorithm that operates without GPS, effective across diverse crop types, growth stages, and challenging scenarios.
Findings
Achieved an average cross-track error of 3.55cm in real field tests.
Successfully navigated in simulated and real agricultural environments.
Operated without reliance on GPS or global localization methods.
Abstract
Autonomous navigation is crucial for various robotics applications in agriculture. However, many existing methods depend on RTK-GPS devices, which can be susceptible to loss of radio signal or intermittent reception of corrections from the internet. Consequently, research has increasingly focused on using RGB cameras for crop-row detection, though challenges persist when dealing with grown plants. This paper introduces a LiDAR-based navigation system that can achieve crop-agnostic over-canopy autonomous navigation in row-crop fields, even when the canopy fully blocks the inter-row spacing. Our algorithm can detect crop rows across diverse scenarios, encompassing various crop types, growth stages, the presence of weeds, curved rows, and discontinuities. Without utilizing a global localization method (i.e., based on GPS), our navigation system can perform autonomous navigation in these…
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Taxonomy
TopicsSmart Agriculture and AI
