5 research outputs found
A note on the depth-from-defocus mechanism of jumping spiders
Jumping spiders are capable of estimating the distance to their prey relying only on the information from one of their main eyes. Recently, it has been shown that jumping spiders perform this estimation based on image defocus cues. In order to gain insight into the mechanisms involved in this blur-to-distance mapping as performed by the spider and to judge whether inspirations can be drawn from spider vision for depth-from-defocus computer vision algorithms, we constructed a three-dimensional (3D) model of the anterior median eye of the Metaphidippus aeneolus, a well studied species of jumping spider. We were able to study images of the environment as the spider would see them and to measure the performances of a well known depth-from-defocus algorithm on this dataset. We found that the algorithm performs best when using images that are averaged over the considerable thickness of the spider's receptor layers, thus pointing towards a possible functional role of the receptor thickness for the spider's depth estimation capabilities
Galaxy classification: A machine learning analysis of GAMA catalogue data
We present a machine learning analysis of five labelled galaxy catalogues
from the Galaxy And Mass Assembly (GAMA): The SersicCatVIKING and
SersicCatUKIDSS catalogues containing morphological features, the
GaussFitSimple catalogue containing spectroscopic features, the MagPhys
catalogue including physical parameters for galaxies, and the Lambdar
catalogue, which contains photometric measurements. Extending work previously
presented at the ESANN 2018 conference - in an analysis based on Generalized
Relevance Matrix Learning Vector Quantization and Random Forests - we find that
neither the data from the individual catalogues nor a combined dataset based on
all 5 catalogues fully supports the visual-inspection-based galaxy
classification scheme employed to categorise the galaxies. In particular, only
one class, the Little Blue Spheroids, is consistently separable from the other
classes. To aid further insight into the nature of the employed visual-based
classification scheme with respect to physical and morphological features, we
present the galaxy parameters that are discriminative for the achieved class
distinctions.Comment: Accepted for the ESANN 2018 Special Issue of Neurocomputin
Galaxy classification: A machine learning analysis of GAMA catalogue data
We present a machine learning analysis of five labelled galaxy catalogues from the Galaxy And Mass Assembly (GAMA): The SersicCatVIKING and SersicCatUKIDSS catalogues containing morphological features, the GaussFitSimplecatalogue containing spectroscopic features, the MagPhys catalogue including physical parameters for galaxies, and the Lambdar catalogue, which contains photometric measurements. Extending work previously presented at the ESANN 2018 conference – in an analysis based on Generalized Relevance Matrix Learning Vector Quantization and Random Forests – we find that neither the data from the individual catalogues nor a combined dataset based on all 5 catalogues fully supports the visual-inspection-based galaxy classification scheme employed to categorise the galaxies. In particular, only one class, the Little Blue Spheroids, is consistently separable from the other classes. To aid further insight into the nature of the employed visual-based classification scheme with respect to physical and morphological features, we present the galaxy parameters that are discriminative for the achieved class distinctions
Analysing the Depth-from-Defocus Mechanism of Jumping Spiders: Blender model, data and analysis scripts
<p>Supplementary material to reproduce the results from:</p>
<p><strong>A Note on the Depth-from-Defocus Mechanism of Jumping Spiders</strong><br>
Aleke Nolte , Daniel Hennes , Dario Izzo , Christian Blum , Verena V. Hafner and Tom Gheysens</p