1,765 research outputs found

    A high-performance inner-product processor for real and complex numbers.

    Get PDF
    A novel, high-performance fixed-point inner-product processor based on a redundant binary number system is investigated in this dissertation. This scheme decreases the number of partial products to 50%, while achieving better speed and area performance, as well as providing pipeline extension opportunities. When modified Booth coding is used, partial products are reduced by almost 75%, thereby significantly reducing the multiplier addition depth. The design is applicable for digital signal and image processing applications that require real and/or complex numbers inner-product arithmetic, such as digital filters, correlation and convolution. This design is well suited for VLSI implementation and can also be embedded as an inner-product core inside a general purpose or DSP FPGA-based processor. Dynamic control of the computing structure permits different computations, such as a variety of inner-product real and complex number computations, parallel multiplication for real and complex numbers, and real and complex number division. The same structure can also be controlled to accept redundant binary number inputs for multiplication and inner-product computations. An improved 2's-complement to redundant binary converter is also presented

    Conserving Historic Urban Landscape and Beautifying the City by Means of its History

    Get PDF
    This paper focuses on three issues concerning historic urban landscape conservation under the background of new urbanization: the first one is attaching great importance to cultural heritage conservation in rapid urbanization; the second one is laying great emphasis on historic urban landscape conservation which is part of cultural heritage conservation; the third is Hangzhou’s practice in cultural heritage conservation

    Quality Classified Image Analysis with Application to Face Detection and Recognition

    Full text link
    Motion blur, out of focus, insufficient spatial resolution, lossy compression and many other factors can all cause an image to have poor quality. However, image quality is a largely ignored issue in traditional pattern recognition literature. In this paper, we use face detection and recognition as case studies to show that image quality is an essential factor which will affect the performances of traditional algorithms. We demonstrated that it is not the image quality itself that is the most important, but rather the quality of the images in the training set should have similar quality as those in the testing set. To handle real-world application scenarios where images with different kinds and severities of degradation can be presented to the system, we have developed a quality classified image analysis framework to deal with images of mixed qualities adaptively. We use deep neural networks first to classify images based on their quality classes and then design a separate face detector and recognizer for images in each quality class. We will present experimental results to show that our quality classified framework can accurately classify images based on the type and severity of image degradations and can significantly boost the performances of state-of-the-art face detector and recognizer in dealing with image datasets containing mixed quality images.Comment: 6 page

    Some double series for π\pi and their qq-analogues

    Full text link
    By applying the partial derivative operator to several summation formulas for hypergeometric series, we prove several double series for π\pi in this paper. Similarly, we also establish several qq-analogues of them
    • …
    corecore