We propose a deep learning-based method for object detection in UAV-borne thermal images that have the capability of observing scenes in both day and night. Compared with visible images, thermal images have lower requirements for illumination conditions, but they typically have blurred edges and low contrast. Using a boundary-aware salient object detection network, we extract the saliency maps of the thermal images to improve the distinguishability. Thermal images are augmented with the corresponding saliency maps through channel replacement and pixel-level weighted fusion methods. Considering the limited computing power of UAV platforms, a lightweight combinational neural network ComNet is used as the core object detection method. The YOLO...
An infrared sensor is a commonly used imaging device. Unmanned aerial vehicles, the most promising m...
This paper presents a method to generate a dataset for training a deep convolutional network to dete...
An infrared sensor is a commonly used imaging device. Unmanned aerial vehicles, the most promising m...
We propose a deep learning-based method for object detection in UAV-borne thermal images that have t...
The task of the detection of unmanned aerial vehicles (UAVs) is of great significance to social comm...
The use of Unmanned Aerial Vehicles (UAV) has been increasing over the last few years in many sorts ...
This study proposes a novel illumination-aware image fusion technique and a Convolutional Neural Net...
A few promising solutions for thermal imaging Unexploded Ordnance (UXO) detection were proposed afte...
This thesis is concerned with the task of assisting search and rescue missions by discovering missin...
This paper considers a model of object detection on aerial photographs and video using a neural netw...
This paper discusses the work on detecting multi-objects such as ...
This paper considers a model of object detection on aerial photographs and video using a neural netw...
In order to build a robust network for the unmanned aerial vehicle (UAV)-based ground pedestrian and...
This deliverable presents the overall development status of the deep learning analytics applied on U...
Object detection plays an important role in autonomous driving, disaster rescue, robot navigation, i...
An infrared sensor is a commonly used imaging device. Unmanned aerial vehicles, the most promising m...
This paper presents a method to generate a dataset for training a deep convolutional network to dete...
An infrared sensor is a commonly used imaging device. Unmanned aerial vehicles, the most promising m...
We propose a deep learning-based method for object detection in UAV-borne thermal images that have t...
The task of the detection of unmanned aerial vehicles (UAVs) is of great significance to social comm...
The use of Unmanned Aerial Vehicles (UAV) has been increasing over the last few years in many sorts ...
This study proposes a novel illumination-aware image fusion technique and a Convolutional Neural Net...
A few promising solutions for thermal imaging Unexploded Ordnance (UXO) detection were proposed afte...
This thesis is concerned with the task of assisting search and rescue missions by discovering missin...
This paper considers a model of object detection on aerial photographs and video using a neural netw...
This paper discusses the work on detecting multi-objects such as ...
This paper considers a model of object detection on aerial photographs and video using a neural netw...
In order to build a robust network for the unmanned aerial vehicle (UAV)-based ground pedestrian and...
This deliverable presents the overall development status of the deep learning analytics applied on U...
Object detection plays an important role in autonomous driving, disaster rescue, robot navigation, i...
An infrared sensor is a commonly used imaging device. Unmanned aerial vehicles, the most promising m...
This paper presents a method to generate a dataset for training a deep convolutional network to dete...
An infrared sensor is a commonly used imaging device. Unmanned aerial vehicles, the most promising m...