Multi-temporal UAV RGB image datasets for individual tree segmentation

Citation Author(s):
Shichao
Yu
Submitted by:
Susu Deng
Last updated:
Wed, 03/05/2025 - 01:59
DOI:
10.21227/s8c4-9g65
License:
21 Views
Categories:
Keywords:
0
0 ratings - Please login to submit your rating.

Abstract 

This dataset comprises UAV-acquired RGB image samples covering three distinct forest ecosystem types across multiple phenological seasons. Each dataset package contains high-resolution PNG-format aerial imagery paired with corresponding annotation files, maintaining consistent filenames between images and their pixel-level vegetation labels for seamless data association. The time-series acquisition strategy captures seasonal variations in canopy structure, coloration, and density within identical geographic coordinates. Researchers can perform cross-seasonal comparative analysis by pairing summer and autumn/winter images from the same forest stand, enabling multi-temporal object detection of individual tree crowns with changing environmental conditions. This resource facilitates algorithm development for precision forestry, ecological monitoring, and climate change impact studies, particularly benefiting models requiring temporal feature learning from limited spectral (RGB) data. The standardized structure ensures compatibility with mainstream deep learning frameworks for vegetation remote sensing applications.

Instructions: 

This dataset contains sample datasets of UAV images of three different forest types in different seasons, including PNG images and labels. Among them, the label file name and image file name of the same dataset are the same. Users can combine two different seasons of forests in the same area based on different seasonal images for multi temporal object detection.

Dataset Files

    Files have not been uploaded for this dataset