--- license: other task_categories: - object-detection - image-segmentation - robotics - slam - navigation language: - en - es tags: - agriculture - robotics - orchards - alto-valle - stereo-vision - lidar - gnss-rtk pretty_name: Alto Valle Dataset size_categories: - 100G

Autonomous navigation data in Alto Valle Pear Orchards

## 📖 Overview The **Alto Valle Dataset** is a collection of experimental data acquired in pear orchards (*Pyrus communis*) at the **INTA Alto Valle Experimental Station** (Río Negro, Argentina). The main goal of this dataset is to support the development of **localization, mapping (SLAM), and navigation algorithms** in agricultural environments. It presents unique challenges such as: * High variability in lighting and terrain. * Seasonal changes: Data captures during **Summer/Autumn** (leafy, pre-harvest) and **Winter** (leafless, pruning). * Repetitive structures (rows of trees). ## 🚜 Hardware & Setup The data was captured using a modified **N. Blosi Senior** harvesting platform moving at approximately $0.3 m/s$. | Sensor Type | Model | Specifications | | :--- | :--- | :--- | | **Stereo Camera** | **Stereolabs ZED** | 720x1280 @ 15 FPS. USB 3.0 connected to Nvidia Jetson TX1. | | **LiDAR** | **SICK LMS-100** | 2D LiDAR, 50Hz (stored at 1Hz), 270° FOV, 0.5° resolution. | | **GNSS-RTK** | **U-BLOX C94-M8P-2** | Base + Rover setup (915MHz link). ~2.5cm accuracy. 1Hz update rate. | The sensors were mounted 2.5m high, with the camera acting as the reference frame. ## 📁 Dataset Structure The dataset is organized by sequences (April and August). Each sequence contains: ```text dataset/ ├── sequenceXX/ │ ├── images/ │ │ ├── left_.png # Rectified left image │ │ ├── right_.png # Rectified right image │ │ └── timestamps.txt # Image timestamps │ ├── lidar.csv # LiDAR readings │ └── gnss.csv # GNSS-RTK readings ``` ### Data Format Details * **Images:** PNG format, rectified. * **GNSS (`gnss.csv`):** Format: `[latitude | longitude | timestamp]` * **LiDAR (`lidar.csv`):** Format: `[timestamp | nscan | 541 x range]` * `nscan`: Frame number generated by the sensor. * `range`: 541 distance values (0.5° angular resolution). ## 📐 Calibration Parameters Intrinsic parameters for the **ZED Camera** used in this dataset. The baseline is **120.647 mm**. | Parameter | Left Camera | Right Camera | | :--- | :--- | :--- | | **fx** | 692.964 | 698.848 | | **fy** | 692.964 | 698.848 | | **cx** | 576.186 | 737.995 | | **cy** | 367.798 | 361.795 | | **k1** | -0.182798 | -0.1634 | | **k2** | 0.0277213 | 0.0214219 | *Extrinsic parameters (transformations between sensors) are available in the PDF documentation or the paper.* ## 📅 Seasons & Conditions The dataset covers different phenological stages of the pear crops (Williams, Abate Fetel, and Beurré D’Anjou varieties): 1. **April 09, 2018 (Autumn):** * **Condition:** Pre-harvest. Dense foliage, branches weighed down by fruit. * **Weather:** Sunny, variable lighting (shadows/direct sun). * **Ground:** Presence of weeds, irrigation ditches. 2. **August 06, 2018 (Winter):** * **Condition:** Pruning season. Deciduous trees (no leaves). Visible trunks and structure. * **Weather:** Partly cloudy/overcast. * **Ground:** Cleared weeds. ## 📥 Access & Download The data is split into `.tar` archives due to size. You can download them directly from the **[Files and versions](https://huggingface.co/datasets/Seba-san/AltoValleDataset/tree/main)** tab. ## ⚖️ Legal Notice & Citation The content of this database is under **Copyright** of the **Universidad Nacional del Comahue** and **INTA EEAV**. If you use this dataset in your research, please cite the work presented at **Jornadas Argentinas de Robótica (JAR) 2022**: * **Paper:** [Read PDF (Spanish)](https://github.com/Seba-san/AltoValleDataset/blob/main/AVD_v0.pdf) * **Video:** [Watch on YouTube](https://youtu.be/qrSIFyLzFrQ) ```bibtex @inproceedings{alto_valle_dataset_2022, title={Alto Valle Dataset: colección de datos experimentales enfocados en el estudio y desarrollo de algoritmos de navegación mediante visión en ambientes frutícolas}, author={Sansoni, Sebastian and Raverta Capua, Francisco and Moreyra, Marcelo L. and Benitez Piccini, Edgardo}, booktitle={Jornadas Argentinas de Robótica (JAR)}, year={2022}, organization={Universidad Nacional del Comahue & INTA EEAV}, url={https://github.com/Seba-san/AltoValleDataset} } ``` ## Acknowledgments This work was supported by the Project of Social Technological Development (PDTS) "Sistemas de Asistencia al Productor y Automatización de Máquinas para la Fruticultura de la Norpatagonia" (PDTS404), funded by CIN and CONICET. ```