Addressing Annotation Imprecision for Tree Crown Delineation Using the RandCrowns Index

05/05/2021
by   Dylan Stewart, et al.
3

Supervised methods for object delineation in remote sensing require labeled ground-truth data. Gathering sufficient high quality ground-truth data is difficult, especially when the targets are of irregular shape or difficult to distinguish from the background or neighboring objects. Tree crown delineation provides key information from remote sensing images for forestry, ecology, and management. However, tree crowns in remote sensing imagery are often difficult to label and annotate due to irregular shape, overlapping canopies, shadowing, and indistinct edges. There are also multiple approaches to annotation in this field (e.g., rectangular boxes vs. convex polygons) that further contribute to annotation imprecision. However, current evaluation methods do not account for this uncertainty in annotations, and quantitative metrics for evaluation can vary across multiple annotators. We address these limitations using an adaptation of the Rand index for weakly-labeled crown delineation that we call RandCrowns. The RandCrowns metric reformulates the Rand index by adjusting the areas over which each term of the index is computed to account for uncertain and imprecise object delineation labels. Quantitative comparisons to the commonly used intersection over union (Jaccard similarity) method shows a decrease in the variance generated by differences among multiple annotators. Combined with qualitative examples, our results suggest that this RandCrowns metric is more robust for scoring target delineations in the presence of uncertainty and imprecision in annotations that are inherent to tree crown delineation. Although the focus of this paper is on evaluation of tree crown delineations, annotation imprecision is a challenge that is common across remote sensing of the environment (and many computer vision problems in general).

READ FULL TEXT

page 3

page 6

page 7

page 8

page 9

research
03/08/2021

The Weakly-Labeled Rand Index

Synthetic Aperture Sonar (SAS) surveys produce imagery with large region...
research
11/19/2021

Evaluating Self and Semi-Supervised Methods for Remote Sensing Segmentation Tasks

We perform a rigorous evaluation of recent self and semi-supervised ML t...
research
04/18/2022

Optical Remote Sensing Image Understanding with Weak Supervision: Concepts, Methods, and Perspectives

In recent years, supervised learning has been widely used in various tas...
research
06/09/2023

SAGE-NDVI: A Stereotype-Breaking Evaluation Metric for Remote Sensing Image Dehazing Using Satellite-to-Ground NDVI Knowledge

Image dehazing is a meaningful low-level computer vision task and can be...
research
11/28/2022

Handling Image and Label Resolution Mismatch in Remote Sensing

Though semantic segmentation has been heavily explored in vision literat...
research
07/28/2021

Evaluating the weight sensitivity in AHP-based flood risk estimation models

In the analytic hierarchy process (AHP) based flood risk estimation mode...
research
02/15/2021

3D Fully Convolutional Neural Networks with Intersection Over Union Loss for Crop Mapping from Multi-Temporal Satellite Images

Information on cultivated crops is relevant for a large number of food s...

Please sign up or login with your details

Forgot password? Click here to reset