302 research outputs found
Partially-observed models for classifying minerals on Mars
The identification of phyllosilicates by NASA's CRISM (Compact Reconnaissance Imaging Spectrometer for Mars) strongly suggests the presence of water-related geological processes. A variety of water-bearing phyllosilicate minerals have already been identified by several research groups utilizing spectral enrichment techniques and matching phyllosilicate-rich regions on the Martian surface to known spectra of minerals found on earth. However, fully automated analysis of the CRISM data remains a challenge for two main reasons. First, there is significant variability in the spectral signature of the same mineral obtained from different regions on the Martian surface. Second, the list of mineral confirmed to date constituting the set of training classes is not exhaustive. Thus, when classifying new regions, using a classifier trained with selected minerals and chemicals, one must consider the potential presence of unknown materials not represented in the training library. We made an initial attempt to study these problems in the context of our recent work on partially-observed classification models and present results that show the utility of such models in identifying spectra of unknown minerals while simultaneously recognizing spectra of known minerals
PERLINDUNGAN HUKUM TERHADAP KORBAN TINDAK PIDANA PERDAGANGAN ORANG DI INDONESIA
Penelitian ini bertujuan untuk mengetahui bagaimana bentuk perlindungan hukum terhadap korban tindak pidana perdagangan orang di indonesia dan Faktor-faktor apa saja yang menjadi kendala dalam perlindungan hukum terhadap korban tindak pidana perdagangan orang di indonesia, metode penelitian yuridis normatif disimpulkan 1. Bentuk perlindungan hukum terhadap korban tindak pidana perdagangan orang harus diberikan dengan berbagai cara yang sesuai dengan kerugian yang telah diderita oleh para korban baik itu kerugian yang bersifat psikis maupun mental. 2. Kendalakendala dalam perlindungan hukum bagi korban tindak pidana perdagangan orang yaitu meskipun pemerintah telah mengeluarkan UU No. 21 tahun 2007 tentang Pemberantasan Tindak Pidana Perdagangan Orang, dalam penerapannya undang-undang ini belum bisa diberlakukan secara efektif, dikarenakan adanya beberapa kendala yang dihadapi baik kendala dari faktor non-yuridis maupun yuridis. Disamping itu faktor fasilitas serta sarana masih kurang mendukung dalam penegakkan UU Nomor 21 Tahun 2007 ini
A Statistical Modeling Approach to Computer-Aided Quantification of Dental Biofilm
Biofilm is a formation of microbial material on tooth substrata. Several
methods to quantify dental biofilm coverage have recently been reported in the
literature, but at best they provide a semi-automated approach to
quantification with significant input from a human grader that comes with the
graders bias of what are foreground, background, biofilm, and tooth.
Additionally, human assessment indices limit the resolution of the
quantification scale; most commercial scales use five levels of quantification
for biofilm coverage (0%, 25%, 50%, 75%, and 100%). On the other hand, current
state-of-the-art techniques in automatic plaque quantification fail to make
their way into practical applications owing to their inability to incorporate
human input to handle misclassifications. This paper proposes a new interactive
method for biofilm quantification in Quantitative light-induced fluorescence
(QLF) images of canine teeth that is independent of the perceptual bias of the
grader. The method partitions a QLF image into segments of uniform texture and
intensity called superpixels; every superpixel is statistically modeled as a
realization of a single 2D Gaussian Markov random field (GMRF) whose parameters
are estimated; the superpixel is then assigned to one of three classes
(background, biofilm, tooth substratum) based on the training set of data. The
quantification results show a high degree of consistency and precision. At the
same time, the proposed method gives pathologists full control to post-process
the automatic quantification by flipping misclassified superpixels to a
different state (background, tooth, biofilm) with a single click, providing
greater usability than simply marking the boundaries of biofilm and tooth as
done by current state-of-the-art methods.Comment: 10 pages, 7 figures, Journal of Biomedical and Health Informatics
2014. keywords: {Biomedical imaging;Calibration;Dentistry;Estimation;Image
segmentation;Manuals;Teeth},
http://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=6758338&isnumber=636350
BiofilmQuant: A Computer-Assisted Tool for Dental Biofilm Quantification
Dental biofilm is the deposition of microbial material over a tooth
substratum. Several methods have recently been reported in the literature for
biofilm quantification; however, at best they provide a barely automated
solution requiring significant input needed from the human expert. On the
contrary, state-of-the-art automatic biofilm methods fail to make their way
into clinical practice because of the lack of effective mechanism to
incorporate human input to handle praxis or misclassified regions. Manual
delineation, the current gold standard, is time consuming and subject to expert
bias. In this paper, we introduce a new semi-automated software tool,
BiofilmQuant, for dental biofilm quantification in quantitative light-induced
fluorescence (QLF) images. The software uses a robust statistical modeling
approach to automatically segment the QLF image into three classes (background,
biofilm, and tooth substratum) based on the training data. This initial
segmentation has shown a high degree of consistency and precision on more than
200 test QLF dental scans. Further, the proposed software provides the
clinicians full control to fix any misclassified areas using a single click. In
addition, BiofilmQuant also provides a complete solution for the longitudinal
quantitative analysis of biofilm of the full set of teeth, providing greater
ease of usability.Comment: 4 pages, 4 figures, 36th Annual International Conference of the IEEE
Engineering in Medicine and Biology Society (EMBC 2014
The Infinite Mixture of Infinite Gaussian Mixtures
Dirichlet process mixture of Gaussians (DPMG) has been used in the literature for clustering and density estimation problems. However, many real-world data exhibit cluster distributions that cannot be captured by a single Gaussian. Modeling such data sets by DPMG creates several extraneous clusters even when clusters are relatively well-defined. Herein, we present the infinite mixture of infinite Gaussian mixtures (I2GMM) for more flexible modeling of data sets with skewed and multi-modal cluster distributions. Instead of using a single Gaussian for each cluster as in the standard DPMG model, the generative model of I2GMM uses a single DPMG for each cluster. The individual DPMGs are linked together through centering of their base distributions at the atoms of a higher level DP prior. Inference is performed by a collapsed Gibbs sampler that also enables partial parallelization. Experimental results on several artificial and real-world data sets suggest the proposed I2GMM model can predict clusters more accurately than existing variational Bayes and Gibbs sampler versions of DPMG
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