451 research outputs found
Optimization of a Savonius rotor vertical-axis wind turbine for use in water pumping systems in rural Honduras
Thesis (S.B.)--Massachusetts Institute of Technology, Dept. of Mechanical Engineering, 2007.This electronic version was submitted by the student author. The certified thesis is available in the Institute Archives and Special Collections.Includes bibliographical references (p. 26).The D-lab Honduras team designed and constructed a wind-powered water pump in rural Honduras during IAP 2007. Currently, the system does not work under its own power and water must be pumped by hand. This thesis seeks to explore a variety of mechanism and aerodynamic changes to allow the system to function as designed. The novel modifications to the Savonius rotor that were made do not seem to improve its performance. Within the constraints of the installed components, the current rotor should perform well pending other changes. The most promising improvements to the system are weight reducing and friction reducing measures, and in combination with understanding the wind conditions in the immediate vicinity of the rotor, changes will be made this summer so that unassisted wind pumping will be possible.by Aron Zingman.S.B
בּיי די בּרעגעם פון ניעמאן : א ליעדער זאמלונג
https://www.ester.ee/record=b5403222*es
Learning image representations for anomaly detection: application to discovery of histological alterations in drug development
We present a system for anomaly detection in histopathological images. In
histology, normal samples are usually abundant, whereas anomalous
(pathological) cases are scarce or not available. Under such settings,
one-class classifiers trained on healthy data can detect out-of-distribution
anomalous samples. Such approaches combined with pre-trained Convolutional
Neural Network (CNN) representations of images were previously employed for
anomaly detection (AD). However, pre-trained off-the-shelf CNN representations
may not be sensitive to abnormal conditions in tissues, while natural
variations of healthy tissue may result in distant representations. To adapt
representations to relevant details in healthy tissue we propose training a CNN
on an auxiliary task that discriminates healthy tissue of different species,
organs, and staining reagents. Almost no additional labeling workload is
required, since healthy samples come automatically with aforementioned labels.
During training we enforce compact image representations with a center-loss
term, which further improves representations for AD. The proposed system
outperforms established AD methods on a published dataset of liver anomalies.
Moreover, it provided comparable results to conventional methods specifically
tailored for quantification of liver anomalies. We show that our approach can
be used for toxicity assessment of candidate drugs at early development stages
and thereby may reduce expensive late-stage drug attrition.Comment: 14 pages, 7 figures, 4 table
A comparative evaluation of image-to-image translation methods for stain transfer in histopathology
Image-to-image translation (I2I) methods allow the generation of artificial
images that share the content of the original image but have a different style.
With the advances in Generative Adversarial Networks (GANs)-based methods, I2I
methods enabled the generation of artificial images that are indistinguishable
from natural images. Recently, I2I methods were also employed in histopathology
for generating artificial images of in silico stained tissues from a different
type of staining. We refer to this process as stain transfer. The number of I2I
variants is constantly increasing, which makes a well justified choice of the
most suitable I2I methods for stain transfer challenging. In our work, we
compare twelve stain transfer approaches, three of which are based on
traditional and nine on GAN-based image processing methods. The analysis relies
on complementary quantitative measures for the quality of image translation,
the assessment of the suitability for deep learning-based tissue grading, and
the visual evaluation by pathologists. Our study highlights the strengths and
weaknesses of the stain transfer approaches, thereby allowing a rational choice
of the underlying I2I algorithms. Code, data, and trained models for stain
transfer between H&E and Masson's Trichrome staining will be made available
online.Comment: 17 pages, 3 figures, 5 tables, accepted to Medical Imaging with Deep
Learning (MIDL) 2023, to be published in Proceedings of Machine Learning
Researc
Texture segmentation as first step towards archaeological object detection in high-resolution satellite images of the Silvretta Alps
Since 2007, the Silvretta Archaeological Project in the high Alps on the Swiss-Austrian border has been investigating the prehistoric origins of alpine pasture economy. In an area of about
540 km2 more than 20 well-preserved archaeological sites associated with alpine pastoralism have been recorded, the earliest of them dating to the Iron Age (Reitmaier (ed.), 2012; Walser and Lambers, 2012). All of the ruined huts, cellars and livestock enclosures at these sites are visible on the surface and show a limited range of shapes and proportions. According to their function, all of them are located in open grassland.
Based on this sample, we are currently developing methods to detect archaeological objects of the kind described above in high-resolution satellite images of our study area (Lambers and Zingman, in press). These methods are intended to assist archaeological survey in vast and/or difficult to access areas by screening large amounts of remotely sensed images in order to detect possible archaeological sites prior to fieldwork (Cowley, 2012).
Our general approach aims at assessing the probability of the presence of objects of our interest based on geometric cues that can be automatically detected in the satellite and aerial images that we use. We here describe our general methodology and the first integral step constituting a new approach to texture segmentation.Digital Archaeolog
Detection of incomplete enclosures of rectangular shape in remotely sensed images
We develop an approach for detection of ruins of livestock enclosures in alpine areas captured by high-resolution remotely sensed images. These structures are usually of approximately rectangular shape and appear in images as faint fragmented contours in complex background. We address this problem by introducing a new rectangularity feature that quantifies the degree of alignment of an optimal subset of extracted linear segments with a contour of rectangular shape. The rectangularity feature has high values not only for perfect enclosures, but also for broken ones with distorted angles, fragmented walls, or even a completely missing wall. However, it has zero value for spurious structures with less than three sides of a perceivable
rectangle. Performance analysis using large imagery of an alpine environment is provided. We show how the detection performance can be improved by learning from only a few representative examples and a large number of negatives.Computer SciencesEuropean Prehistor
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