2,698 research outputs found

    Low-Power Tracking Image Sensor Based on Biological Models of Attention

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    This paper presents implementation of a low-power tracking CMOS image sensor based on biological models of attention. The presented imager allows tracking of up to N salient targets in the field of view. Employing "smart" image sensor architecture, where all image processing is implemented on the sensor focal plane, the proposed imager allows reduction of the amount of data transmitted from the sensor array to external processing units and thus provides real time operation. The imager operation and architecture are based on the models taken from biological systems, where data sensed by many millions of receptors should be transmitted and processed in real time. The imager architecture is optimized to achieve low-power dissipation both in acquisition and tracking modes of operation. The tracking concept is presented, the system architecture is shown and the circuits description is discussed

    CMOS Nonlinear Signal Processing Circuits

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    An ultra-low-power voltage-mode asynchronous WTA-LTA circuit

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    This paper presents an asynchronous mixed-signal WTA-LTA circuit conceived to carry out local minimummaximum indexing in massively parallel image processing arrays. The hardware is focused on energy-efficient operation. We describe a realization for the standard CMOS base process of a commercial 3-D TSV stack featuring a power consumption of only 20pW per elementary cell at 30fps. The proposed block is also capable of resolving small voltage differences without requiring any external reference. This leads to a hit percentage greater than 90% even when taking into account global process variations and mismatch conditions.MINECO TEC2012-38921-C02-01Fondo Europeo de Desarrollo Regional IPT-2011-1625- 430000 IPC-2011100

    An Analog VLSI Deep Machine Learning Implementation

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    Machine learning systems provide automated data processing and see a wide range of applications. Direct processing of raw high-dimensional data such as images and video by machine learning systems is impractical both due to prohibitive power consumption and the “curse of dimensionality,” which makes learning tasks exponentially more difficult as dimension increases. Deep machine learning (DML) mimics the hierarchical presentation of information in the human brain to achieve robust automated feature extraction, reducing the dimension of such data. However, the computational complexity of DML systems limits large-scale implementations in standard digital computers. Custom analog signal processing (ASP) can yield much higher energy efficiency than digital signal processing (DSP), presenting means of overcoming these limitations. The purpose of this work is to develop an analog implementation of DML system. First, an analog memory is proposed as an essential component of the learning systems. It uses the charge trapped on the floating gate to store analog value in a non-volatile way. The memory is compatible with standard digital CMOS process and allows random-accessible bi-directional updates without the need for on-chip charge pump or high voltage switch. Second, architecture and circuits are developed to realize an online k-means clustering algorithm in analog signal processing. It achieves automatic recognition of underlying data pattern and online extraction of data statistical parameters. This unsupervised learning system constitutes the computation node in the deep machine learning hierarchy. Third, a 3-layer, 7-node analog deep machine learning engine is designed featuring online unsupervised trainability and non-volatile floating-gate analog storage. It utilizes massively parallel reconfigurable current-mode analog architecture to realize efficient computation. And algorithm-level feedback is leveraged to provide robustness to circuit imperfections in analog signal processing. At a processing speed of 8300 input vectors per second, it achieves 1×1012 operation per second per Watt of peak energy efficiency. In addition, an ultra-low-power tunable bump circuit is presented to provide similarity measures in analog signal processing. It incorporates a novel wide-input-range tunable pseudo-differential transconductor. The circuit demonstrates tunability of bump center, width and height with a power consumption significantly lower than previous works

    Rule 82 & Tort Reform: An Empirical Study of the Impact of Alaska’s English Rule on Federal Civil Case Filings

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    Alaska is the only American state that employs a variation of the “English Rule,” whereby the losing party in a civil case must pay the prevailing party’s attorneys’ fees. In recent years, advocates of tort reform have praised Alaska’s Civil Rule 82 as a model for tort reform to help rid the overburdened courts of low merit claims. But does Rule 82 really reduce meritless litigation? This study compares civil case filings in the District of Alaska to a sample of other comparable federal district courts. Although filings in the District of Alaska were lower than the national average, they were indistinguishable from the remainder of the sample. Other measures also failed to demonstrate any significant differences between civil cases in the District of Alaska and the other districts. These results suggest that reformers looking to reduce meritless litigation should look elsewhere for model reform measures

    RAID-2: Design and implementation of a large scale disk array controller

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    We describe the implementation of a large scale disk array controller and subsystem incorporating over 100 high performance 3.5 inch disk drives. It is designed to provide 40 MB/s sustained performance and 40 GB capacity in three 19 inch racks. The array controller forms an integral part of a file server that attaches to a Gb/s local area network. The controller implements a high bandwidth interconnect between an interleaved memory, an XOR calculation engine, the network interface (HIPPI), and the disk interfaces (SCSI). The system is now functionally operational, and we are tuning its performance. We review the design decisions, history, and lessons learned from this three year university implementation effort to construct a truly large scale system assembly

    Analog Content Addressable Memory

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    Image Sensors in Security and Medical Applications

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    This paper briefly reviews CMOS image sensor technology and its utilization in security and medical applications. The role and future trends of image sensors in each of the applications are discussed. To provide the reader deeper understanding of the technology aspects the paper concentrates on the selected applications such as surveillance, biometrics, capsule endoscopy and artificial retina. The reasons for concentrating on these applications are due to their importance in our daily life and because they present leading-edge applications for imaging systems research and development. In addition, review of image sensors implementation in these applications allows the reader to investigate image sensor technology from the technical and from other views as well
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