9,806 research outputs found
Bounding normalization time through intersection types
Non-idempotent intersection types are used in order to give a bound of the
length of the normalization beta-reduction sequence of a lambda term: namely,
the bound is expressed as a function of the size of the term.Comment: In Proceedings ITRS 2012, arXiv:1307.784
Thoracic Disease Identification and Localization with Limited Supervision
Accurate identification and localization of abnormalities from radiology
images play an integral part in clinical diagnosis and treatment planning.
Building a highly accurate prediction model for these tasks usually requires a
large number of images manually annotated with labels and finding sites of
abnormalities. In reality, however, such annotated data are expensive to
acquire, especially the ones with location annotations. We need methods that
can work well with only a small amount of location annotations. To address this
challenge, we present a unified approach that simultaneously performs disease
identification and localization through the same underlying model for all
images. We demonstrate that our approach can effectively leverage both class
information as well as limited location annotation, and significantly
outperforms the comparative reference baseline in both classification and
localization tasks.Comment: Conference on Computer Vision and Pattern Recognition 2018 (CVPR
2018). V1: CVPR submission; V2: +supplementary; V3: CVPR camera-ready; V4:
correction, update reference baseline results according to their latest post;
V5: minor correction; V6: Identification results using NIH data splits and
various image model
Convolutional Neural Networks Applied to Neutrino Events in a Liquid Argon Time Projection Chamber
We present several studies of convolutional neural networks applied to data
coming from the MicroBooNE detector, a liquid argon time projection chamber
(LArTPC). The algorithms studied include the classification of single particle
images, the localization of single particle and neutrino interactions in an
image, and the detection of a simulated neutrino event overlaid with cosmic ray
backgrounds taken from real detector data. These studies demonstrate the
potential of convolutional neural networks for particle identification or event
detection on simulated neutrino interactions. We also address technical issues
that arise when applying this technique to data from a large LArTPC at or near
ground level
LoANs: Weakly Supervised Object Detection with Localizer Assessor Networks
Recently, deep neural networks have achieved remarkable performance on the
task of object detection and recognition. The reason for this success is mainly
grounded in the availability of large scale, fully annotated datasets, but the
creation of such a dataset is a complicated and costly task. In this paper, we
propose a novel method for weakly supervised object detection that simplifies
the process of gathering data for training an object detector. We train an
ensemble of two models that work together in a student-teacher fashion. Our
student (localizer) is a model that learns to localize an object, the teacher
(assessor) assesses the quality of the localization and provides feedback to
the student. The student uses this feedback to learn how to localize objects
and is thus entirely supervised by the teacher, as we are using no labels for
training the localizer. In our experiments, we show that our model is very
robust to noise and reaches competitive performance compared to a
state-of-the-art fully supervised approach. We also show the simplicity of
creating a new dataset, based on a few videos (e.g. downloaded from YouTube)
and artificially generated data.Comment: To appear in AMV18. Code, datasets and models available at
https://github.com/Bartzi/loan
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