589 research outputs found
Using Deep Learning to Count Albatrosses from Space
In this paper we test the use of a deep learning approach to automatically count Wandering Albatrosses in Very High Resolution (VHR) satellite imagery. We use a dataset of manually labelled imagery provided by the British Antarctic Survey to train and develop our methods. We employ a U-Net architecture, designed for image segmentation, to simultaneously classify and localise potential albatrosses. We aid training with the use of the Focal Loss criterion, to deal with extreme class imbalance in the dataset. Initial results achieve peak precision and recall values of approximately 80%. Finally we assess the modelâs performance in relation to interobserver variation, by comparing errors against an image labelled by multiple observers. We conclude model accuracy falls within the range of human counters. We hope that the methods will streamline the analysis of VHR satellite images, enabling more frequent monitoring of a species which is of high conservation concern
Using deep learning to count albatrosses from space: Assessing results in light of ground truth uncertainty
Many wildlife species inhabit inaccessible environments, limiting researchers ability to conduct essential population surveys. Recently, very high resolution (sub-metre) satellite imagery has enabled remote monitoring of certain species directly from space; however, manual analysis of the imagery is time-consuming, expensive and subjective. State-of-the-art deep learning approaches can automate this process; however, often image datasets are small, and uncertainty in ground truth labels can affect supervised training schemes and the interpretation of errors. In this paper, we investigate these challenges by conducting both manual and automated counts of nesting Wandering Albatrosses on four separate islands, captured by the 31 cm resolution WorldView-3 sensor. We collect counts from six observers, and train a convolutional neural network (U-Net) using leave-one-island-out cross-validation and different combinations of ground truth labels. We show that (1) interobserver variation in manual counts is significant and differs between the four islands, (2) the small dataset can limit the networks ability to generalise to unseen imagery and (3) the choice of ground truth labels can have a significant impact on our assessment of network performance. Our final results show the network detects albatrosses as accurately as human observers for two of the islands, while in the other two misclassifications are largely caused by the presence of noise, cloud cover and habitat, which was not present in the training dataset. While the results show promise, we stress the importance of considering these factors for any study where data is limited and observer confidence is variable
Fixed point actions for SU(3) gauge theory
We summarize our recent work on the construction and properties of fixed
point (FP) actions for lattice pure gauge theory. These actions have
scale invariant instanton solutions and their spectrum is exact through
1--loop, i.e. in their physical predictions there are no nor
cut--off effects for any . We present a few-parameter approximation to a
classical FP action which is valid for short correlation lengths. We perform a
scaling test of the action by computing the quantity ,
where the string tension is measured from the torelon mass , on lattices of fixed physical volume and varying lattice spacing
. While the Wilson action shows scaling violations of about ten per cent,
the approximate fixed point action scales within the statistical errors for .Comment: 11 pages, uuencoded compressed postscript fil
The classically perfect fixed point action for SU(3) gauge theory
In this paper (the first of a series) we describe the construction of fixed
point actions for lattice pure gauge theory. Fixed point actions have
scale invariant instanton solutions and the spectrum of their quadratic part is
exact (they are classical perfect actions). We argue that the fixed point
action is even 1--loop quantum perfect, i.e. in its physical predictions there
are no cut--off effects for any . We discuss the construction of
fixed point operators and present examples. The lowest order
potential obtained from the fixed point Polyakov loop correlator
is free of any cut--off effects which go to zero as an inverse power of the
distance .Comment: 34 pages (latex) + 7 figures (Postscript), uuencode
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