Automated animal censuses with aerial imagery are a vital ingredient towards wildlife conservation. Recent models are generally based on deep learning and thus require vast amounts of training data. Due to their scarcity and minuscule size, annotating animals in aerial imagery is a highly tedious process. In this project, we present a methodology to reduce the amount of required training data by resorting to self-supervised pretraining. In detail, we examine a combination of recent contrastive learning methodologies like Momentum Contrast (MoCo) and Cross-Level Instance-Group Discrimination (CLD) to condition our model on the aerial images without the requirement for labels. We show that a combination of MoCo, CLD, and geometric augmentatio...
Using automated processes to detect wildlife in uncontrolled outdoor imagery in the field of wildlif...
Semi-arid savannas are endangered by changes in the fragile equilibrium between rainfalls, fires and...
Abstract: The management of livestock in extensive production systems may be challenging, especially...
Knowledge over the number of animals in large wildlife reserves is a vital necessity for park ranger...
The loss rate of endangered animal species has reached levels that are critical enough for our time ...
Automated object detectors on Unmanned Aerial Vehi-cles (UAVs) are increasingly employed for a wide ...
We present an Active Learning (AL) strategy for reusing a deep Convolutional Neural Network (CNN)-ba...
In deep learning, data augmentation is important to increase the amount of training images to obtain...
Repeated animal censuses are crucial for wildlife parks to ensure ecological equilibriums. They are ...
Using automated processes to detect wildlife in uncontrolled outdoor imagery in the field of wildlif...
In recent years, small unmanned aircraft systems (sUAS) have been used widely to monitor animals bec...
Our research presents a proof-of-concept that explores a new and innovative method to identify large...
Illegal wildlife poaching poses one severe threat to the environment. Measures to stem poaching have...
We introduce recommendations to train a Convolutional Neural Network for grid-based detection on a d...
Unmanned aerial vehicles (UAVs) offer new opportunities for wildlife monitoring, with several advant...
Using automated processes to detect wildlife in uncontrolled outdoor imagery in the field of wildlif...
Semi-arid savannas are endangered by changes in the fragile equilibrium between rainfalls, fires and...
Abstract: The management of livestock in extensive production systems may be challenging, especially...
Knowledge over the number of animals in large wildlife reserves is a vital necessity for park ranger...
The loss rate of endangered animal species has reached levels that are critical enough for our time ...
Automated object detectors on Unmanned Aerial Vehi-cles (UAVs) are increasingly employed for a wide ...
We present an Active Learning (AL) strategy for reusing a deep Convolutional Neural Network (CNN)-ba...
In deep learning, data augmentation is important to increase the amount of training images to obtain...
Repeated animal censuses are crucial for wildlife parks to ensure ecological equilibriums. They are ...
Using automated processes to detect wildlife in uncontrolled outdoor imagery in the field of wildlif...
In recent years, small unmanned aircraft systems (sUAS) have been used widely to monitor animals bec...
Our research presents a proof-of-concept that explores a new and innovative method to identify large...
Illegal wildlife poaching poses one severe threat to the environment. Measures to stem poaching have...
We introduce recommendations to train a Convolutional Neural Network for grid-based detection on a d...
Unmanned aerial vehicles (UAVs) offer new opportunities for wildlife monitoring, with several advant...
Using automated processes to detect wildlife in uncontrolled outdoor imagery in the field of wildlif...
Semi-arid savannas are endangered by changes in the fragile equilibrium between rainfalls, fires and...
Abstract: The management of livestock in extensive production systems may be challenging, especially...