25 research outputs found

    FPGA-Based Portable Ultrasound Scanning System with Automatic Kidney Detection

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    Bedsides diagnosis using portable ultrasound scanning (PUS) offering comfortable diagnosis with various clinical advantages, in general, ultrasound scanners suffer from a poor signal-to-noise ratio, and physicians who operate the device at point-of-care may not be adequately trained to perform high level diagnosis. Such scenarios can be eradicated by incorporating ambient intelligence in PUS. In this paper, we propose an architecture for a PUS system, whose abilities include automated kidney detection in real time. Automated kidney detection is performed by training the Viola–Jones algorithm with a good set of kidney data consisting of diversified shapes and sizes. It is observed that the kidney detection algorithm delivers very good performance in terms of detection accuracy. The proposed PUS with kidney detection algorithm is implemented on a single Xilinx Kintex-7 FPGA, integrated with a Raspberry Pi ARM processor running at 900 MHz

    Der Rechtsschutz gegen Zwangsmaßnahmen und Akteneinsichtsrecht

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    第一章 はじめに 第二章 日本における問題状況 : 強制処分に関する秘密性保持 第三章 強制処分の基礎となる証拠資料の全面開示 : ヨーロッパ人権裁判所及びドイツ連邦憲法裁判所における判例の展開 第四章 むすびにかえて : 強制処分に対する実効的権利保障と証拠開示内田教授・薮野教授退職記念論文集Essays dedicated to Professor Hirofumi Uchida Professor Yuzo Yabuno In Commemoration of their Retirement

    Fault Analysis in a Residential DC Microgrid

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    It is well known that after the late 19th century ''war of currents'' fought between Edison and Tesla, Alternating Current (AC) systems have always been considered the cornerstone of electricity transmission. The recent diffusion of renewable energy sources and electronic loads, operating in direct current (DC), has led to a reassessment of the technical and economic viability of using DC microgrids or portions of grids. In this context, DC systems has recently found fertile ground also in low-voltage DC distribution (LVDC). It is known that its spread has been hampered by one of DC's biggest problems: the fault protection system. DC protection coordination is the subject of several studies and, despite its complexity, it is possible to identify two main elements: the rapidity and magnitude of fault current transients; and the dependence of fault behavior on converter topology and the earthing system. Therefore, the deployment of DC must inevitably go through the resolution of the aforementioned problems and thus through a preliminary phase of fault analysis of DC networks. The aim of this article is to carry out fault analysis in DC microgrids with a focus on the contributions of electronic components to the fault. In this regard, a case study of a LVDC residential microgrid model has been taken as a reference, where all elements have been analyzed and, having defined the network topology and the earthing system, the circuit equivalents have been realized in order to carry out the operational fault analysis

    Computer Aided Abnormality Detection for Kidney on FPGA based IoT Enabled Portable Ultrasound Imaging System

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    Ultrasound imaging has been widely used for preliminary diagnosis as it is non-invasive and has good scope for the doctors to analyse many diseases. Due to lack of trained radiologists in remote areas, tele-radiology is used to diagnose the scanned ultrasound data. Availability of online Radiographers and having communication facility for the portable ultrasound is an issue in tele-radiology for using ultrasound scanning in remote health-care. In this scenario, Computer Aided Diagnosis (CAD) will be beneficial in diagnosing the patients with minimal manual intervention. Hence, in this paper we propose FPGA based CAD algorithm for abnormality detection of kidney in ultrasound images. As a pre-processing, ultrasound image is denoised and region of interest of kidney in ultrasound image is segmented. Intensity histogram features and Haralick features are extracted from kidney region. The algorithm is implemented in two stages. In first stage, a Look Up Table (LUT) based approach is used to differentiate between normal and abnormal kidney images. If abnormality is detected then SVM classifier is used to further classify the presence of stone or cyst in kidney ultrasound image. SVM with Multi Layer Perceptron (MLP) kernel approach is used to detect the exact abnormality. The propose algorithm resulted with an accuracy of 98.14% in detecting the cyst or stone in kidney ultrasound images. The proposed algorithm is implemented on FPGA based Xilinx Kintex-7 boar
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