Addressing class imbalance problems to improve animal detection through aerial image data
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Date
2025-06
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Publisher
Indian Statistical Institute, Kolkata
Abstract
Monitoring animal populations in wildlife reserves is essential for conservation, especially
for endangered species, but manual censuses are costly, risky, and logistically challenging
due to vast, inaccessible terrains. Unmanned Aerial Vehicles (UAVs) with digital cameras
provide a safer, scalable solution for collecting aerial imagery to estimate animal populations.
However, semi-automated processing of these images faces significant challenges
due to class imbalance in datasets, including foreground-background disparities, where
background terrain dominates over sparse animal instances, and inter-class imbalances
from uneven species representation and varied visual appearances (e.g., species, sizes, fur
patterns) against diverse backgrounds like deserts or forests. These imbalances hinder
Convolutional Neural Networks (CNNs) used for object detection, leading to inaccurate
population estimates. This project addresses these issues using a dataset of 561 aerial
images from Tsavo National Parks (March 2014) and Laikipia-Samburu Ecosystem (May
2015), collected by the Kenya Wildlife Service. We propose a clustering-based approach
to categorize background terrain into distinct classes (e.g., desert, grassland), aiming to
mitigate imbalances and improve animal detection accuracy in UAV imagery, supporting
reliable, data-driven conservation strategies.
Description
Dissertation under the supervision of Dr. Sarbani Palit and Dr. Ujjwal Verma
Keywords
Unmanned Aerial Vehicles (UAVs), Convolutional Neural Networks (CNNs)
Citation
38p.
