MethControl

MethControl

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KSR Ceres 3 Channel Preamp Pedal - Black Sparkle (Ares, Artemis, Colossus Modes) | Axe Palace | Reverb
KSR Ceres 3 Channel Preamp Pedal - Black Sparkle (Ares, Artemis, Colossus Modes) | Axe Palace | Reverb
KSR Ceres – 3ch Preamp Pedal. New 2020 model! Overview The Ceres™ preamp, the newest addition to the KSR line, contains our signature tones from three of our amplifiers – the Ares, the Artemis/Gemini, and the Colossus. Ultimately, the Ceres™ preamp distills our KSR sound into a small package. At ...
·reverb.com·
KSR Ceres 3 Channel Preamp Pedal - Black Sparkle (Ares, Artemis, Colossus Modes) | Axe Palace | Reverb
Matching colonic polyps using correlation optimized warping, Proceedings of SPIE | 10.1117/12.844352 | DeepDyve
Matching colonic polyps using correlation optimized warping, Proceedings of SPIE | 10.1117/12.844352 | DeepDyve
Computed tomographic colonography (CTC) combined with a computer aided detection system has the potential for improving colonic polyp detection and increasing the use of CTC for colon cancer screening. In the clinical use of CTC, a true colonic polyp will be confirmed with high confidence if a radiologist can find it on both the supine and prone scans. To assist radiologists in CTC reading, we propose a new method for matching polyp findings on the supine and prone scans. The method performs a colon registration using four automatically identified anatomical salient points and correlation optimized warping (COW) of colon centerline features. We first exclude false positive detections using prediction information from a support vector machine (SVM) classifier committee to reduce initial false positive pairs. Then each remaining CAD detection is mapped to the other scan using COW technique applied to the distance along the centerline in each colon. In the last step, a new SVM classifier is applied to the candidate pair dataset to find true polyp pairs between supine and prone scans. Experimental results show that our method can improve the sensitivity to 0.87 at 4 false positive pairs per patient compared with 0.72 for a competing method that uses the normalized distance along the colon centerline (p
·deepdyve.com·
Matching colonic polyps using correlation optimized warping, Proceedings of SPIE | 10.1117/12.844352 | DeepDyve
Manuals - IALA AISM
Manuals - IALA AISM
These documents give a detailed overview of a specific topic. Currently this includes: NAVGUIDE; VTS Manual; and CLU Manual. The NAVGUIDE covers all aspects of Aids to Navigation (AtoN) and is updated every four years at each IALA Conference. The VTS Manual covers all aspects of Vessel Traffic Services and is updated every four years at each Symposium.
·iala-aism.org·
Manuals - IALA AISM
How DTW (Dynamic Time Warping) algorithm works - YouTube
How DTW (Dynamic Time Warping) algorithm works - YouTube
Follow my podcast: http://anchor.fm/tkorting In this video we describe the DTW algorithm, which is used to measure the distance between two time series. It was originally proposed in 1978 by Sakoe and Chiba for speech recognition, and it has been used up to today for time series analysis. DTW is one of the most used measure of the similarity between two time series, and computes the optimal global alignment between two time series, exploiting temporal distortions between them. Source code of graphs available at https://github.com/tkorting/youtube/blob/master/how-dtw-works.m The presentation was created using as references the following scientific papers: 1. Sakoe, H., Chiba, S. (1978). Dynamic programming algorithm optimization for spoken word recognition. IEEE Trans. Acoustic Speech and Signal Processing, v26, pp. 43-49. 2. Souza, C.F.S., Pantoja, C.E.P, Souza, F.C.M. Verificação de assinaturas offline utilizando Dynamic Time Warping. Proceedings of IX Brazilian Congress on Neural Networks, v1, pp. 25-28. 2009. 3. Mueen, A., Keogh. E. Extracting Optimal Performance from Dynamic Time Warping. available at: http://www.cs.unm.edu/~mueen/DTW.pdf Subscribe to my channel!
·youtube.com·
How DTW (Dynamic Time Warping) algorithm works - YouTube
How to install AFNI for nipype · Issue #1067 · nipy/nipype
How to install AFNI for nipype · Issue #1067 · nipy/nipype
Hi, I am currently writing some packages for AFNI/FSL/SPM for my favourite distro (Gentoo). I plan to use these toolkits via nipype. On the example of AFNI: I am currently placing everything into /...
·github.com·
How to install AFNI for nipype · Issue #1067 · nipy/nipype
IALA AISM
IALA AISM
·iala-aism.org·
IALA AISM
Micromachines | Free Full-Text | WiFi-Aided Magnetic Matching for Indoor Navigation with Consumer Portable Devices | HTML
Micromachines | Free Full-Text | WiFi-Aided Magnetic Matching for Indoor Navigation with Consumer Portable Devices | HTML
This paper presents a WiFi-aided magnetic matching (MM) algorithm for indoor pedestrian navigation with consumer portable devices. This algorithm reduces both the mismatching rate (i.e., the rate of matching to an incorrect point that is more than 20 m away from the true value) and computational load of MM by using WiFi positioning solutions to limit the MM search space. Walking tests with Samsung Galaxy S3 and S4 smartphones in two different indoor environments (i.e., Environment #1 with abundant WiFi APs and significant magnetic features, and Environment #2 with less WiFi and magnetic information) were conducted to evaluate the proposed algorithm. It was found that WiFi fingerprinting accuracy is related to the signal distributions. MM provided results with small fluctuations but had a significant mismatch rate; when aided by WiFi, MM’s robustness was significantly improved. The outcome of this research indicates that WiFi and MM have complementary characteristics as the former is a point-by-point matching approach and the latter is based on profile-matching. Furthermore, performance improvement through integrating WiFi and MM depends on the environment (e.g., the signal distributions of magnetic intensity and WiFi RSS): In Environment #1 tests, WiFi-aided MM and WiFi provided similar results; in Environment #2 tests, the former was approximately 41.6% better. Our results supported that the WiFi-aided MM algorithm provided more reliable solutions than both WiFi and MM in the areas that have poor WiFi signal distribution or indistinctive magnetic-gradient features.
·mdpi.com·
Micromachines | Free Full-Text | WiFi-Aided Magnetic Matching for Indoor Navigation with Consumer Portable Devices | HTML