This research paper analyses the effect that using frequency information can have on object detectors. The latter are complex networks that learn information about objects from images and are then able to predict the location of these objects in new, unseen images. There are, however, certain datasets that are hard to learn on, partly because the environment in which images are taken is diverse and complex, and also because the objects to detect can appear in fairly different shapes. The dataset considered in this paper is called the Global Wheat Head Dataset (GWHD, provided by a Kaggle competition). An object detector is run on the original GWHD images and then the performance is compared to running the detector on a frequency filtered ver...
Computer vision relies on labeled datasets for training and evaluation in detecting and recognizing ...
Convolutional Neural Networks (CNNs) have made significant strides in the field of image processing ...
Master's thesis in Automation and signal processingThis thesis reviews methods for interest point de...
A large image usually consists of several smaller objects. People can recognize the objects automati...
Machine Learning and Artificial Intelligence are starting to gain attention around the world. Compan...
This thesis concerns the problem of object detection, which is defined as finding all instances of a...
We present a novel approach to automatically create ef-ficient and accurate object detectors tailore...
The task of finding objects belonging to classes of interest in images has long been a focus of Comp...
This project focuses on object detection in dense volume data. There are several types of dense volu...
There are two sides to every story of visual saliency modeling in the frequency domain. On the one h...
The standard model of early vision claims that orientation and spatial frequency are encoded with mu...
The algorithmic classification of complex, natural scenes is generally considered a difficult task d...
In this thesis we design, implement and study a high-speed object detection framework. Our baseline ...
The algorithmic classification of complex, natural scenes is generally considered a difficult task d...
Context: Insects are a major threat to crop production. They can infect, damage, and reduce agricult...
Computer vision relies on labeled datasets for training and evaluation in detecting and recognizing ...
Convolutional Neural Networks (CNNs) have made significant strides in the field of image processing ...
Master's thesis in Automation and signal processingThis thesis reviews methods for interest point de...
A large image usually consists of several smaller objects. People can recognize the objects automati...
Machine Learning and Artificial Intelligence are starting to gain attention around the world. Compan...
This thesis concerns the problem of object detection, which is defined as finding all instances of a...
We present a novel approach to automatically create ef-ficient and accurate object detectors tailore...
The task of finding objects belonging to classes of interest in images has long been a focus of Comp...
This project focuses on object detection in dense volume data. There are several types of dense volu...
There are two sides to every story of visual saliency modeling in the frequency domain. On the one h...
The standard model of early vision claims that orientation and spatial frequency are encoded with mu...
The algorithmic classification of complex, natural scenes is generally considered a difficult task d...
In this thesis we design, implement and study a high-speed object detection framework. Our baseline ...
The algorithmic classification of complex, natural scenes is generally considered a difficult task d...
Context: Insects are a major threat to crop production. They can infect, damage, and reduce agricult...
Computer vision relies on labeled datasets for training and evaluation in detecting and recognizing ...
Convolutional Neural Networks (CNNs) have made significant strides in the field of image processing ...
Master's thesis in Automation and signal processingThis thesis reviews methods for interest point de...