3,515 research outputs found

    Efficient hardware debugging using parameterized FPGA reconfiguration

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    Functional errors and bugs inadvertently introduced at the RTL stage of the design process are responsible for the largest fraction of silicon IC re-spins. Thus, comprehensive func- tional verification is the key to reduce development costs and to deliver a product in time. The increasing demands for verification led to an increase in FPGA-based tools that perform emulation. These tools can run at much higher operating frequencies and achieve higher coverage than simulation. However, an important pitfall of the FPGA tools is that they suffer from limited internal signal observability, as only a small and preselected set of signals is guided towards (embedded) trace buffers and observed. This paper proposes a dynamically reconfigurable network of multiplexers that significantly enhance the visibility of internal signals. It allows the designer to dynamically change the small set of internal signals to be observed, virtually enlarging the set of observed signals significantly. These multiplexers occupy minimal space, as they are implemented by the FPGA’s routing infrastructure

    LO-FAT: Low-Overhead Control Flow ATtestation in Hardware

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    Attacks targeting software on embedded systems are becoming increasingly prevalent. Remote attestation is a mechanism that allows establishing trust in embedded devices. However, existing attestation schemes are either static and cannot detect control-flow attacks, or require instrumentation of software incurring high performance overheads. To overcome these limitations, we present LO-FAT, the first practical hardware-based approach to control-flow attestation. By leveraging existing processor hardware features and commonly-used IP blocks, our approach enables efficient control-flow attestation without requiring software instrumentation. We show that our proof-of-concept implementation based on a RISC-V SoC incurs no processor stalls and requires reasonable area overhead.Comment: Authors' pre-print version to appear in DAC 2017 proceeding

    Real-time human action recognition on an embedded, reconfigurable video processing architecture

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    Copyright @ 2008 Springer-Verlag.In recent years, automatic human motion recognition has been widely researched within the computer vision and image processing communities. Here we propose a real-time embedded vision solution for human motion recognition implemented on a ubiquitous device. There are three main contributions in this paper. Firstly, we have developed a fast human motion recognition system with simple motion features and a linear Support Vector Machine (SVM) classifier. The method has been tested on a large, public human action dataset and achieved competitive performance for the temporal template (eg. “motion history image”) class of approaches. Secondly, we have developed a reconfigurable, FPGA based video processing architecture. One advantage of this architecture is that the system processing performance can be reconfiured for a particular application, with the addition of new or replicated processing cores. Finally, we have successfully implemented a human motion recognition system on this reconfigurable architecture. With a small number of human actions (hand gestures), this stand-alone system is performing reliably, with an 80% average recognition rate using limited training data. This type of system has applications in security systems, man-machine communications and intelligent environments.DTI and Broadcom Ltd

    FPGA implementation of real-time human motion recognition on a reconfigurable video processing architecture

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    In recent years, automatic human motion recognition has been widely researched within the computer vision and image processing communities. Here we propose a real-time embedded vision solution for human motion recognition implemented on a ubiquitous device. There are three main contributions in this paper. Firstly, we have developed a fast human motion recognition system with simple motion features and a linear Support Vector Machine(SVM) classifier. The method has been tested on a large, public human action dataset and achieved competitive performance for the temporal template (eg. ``motion history image") class of approaches. Secondly, we have developed a reconfigurable, FPGA based video processing architecture. One advantage of this architecture is that the system processing performance can be reconfigured for a particular application, with the addition of new or replicated processing cores. Finally, we have successfully implemented a human motion recognition system on this reconfigurable architecture. With a small number of human actions (hand gestures), this stand-alone system is performing reliably, with an 80% average recognition rate using limited training data. This type of system has applications in security systems, man-machine communications and intelligent environments

    Automated Debugging Methodology for FPGA-based Systems

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    Electronic devices make up a vital part of our lives. These are seen from mobiles, laptops, computers, home automation, etc. to name a few. The modern designs constitute billions of transistors. However, with this evolution, ensuring that the devices fulfill the designer’s expectation under variable conditions has also become a great challenge. This requires a lot of design time and effort. Whenever an error is encountered, the process is re-started. Hence, it is desired to minimize the number of spins required to achieve an error-free product, as each spin results in loss of time and effort. Software-based simulation systems present the main technique to ensure the verification of the design before fabrication. However, few design errors (bugs) are likely to escape the simulation process. Such bugs subsequently appear during the post-silicon phase. Finding such bugs is time-consuming due to inherent invisibility of the hardware. Instead of software simulation of the design in the pre-silicon phase, post-silicon techniques permit the designers to verify the functionality through the physical implementations of the design. The main benefit of the methodology is that the implemented design in the post-silicon phase runs many order-of-magnitude faster than its counterpart in pre-silicon. This allows the designers to validate their design more exhaustively. This thesis presents five main contributions to enable a fast and automated debugging solution for reconfigurable hardware. During the research work, we used an obstacle avoidance system for robotic vehicles as a use case to illustrate how to apply the proposed debugging solution in practical environments. The first contribution presents a debugging system capable of providing a lossless trace of debugging data which permits a cycle-accurate replay. This methodology ensures capturing permanent as well as intermittent errors in the implemented design. The contribution also describes a solution to enhance hardware observability. It is proposed to utilize processor-configurable concentration networks, employ debug data compression to transmit the data more efficiently, and partially reconfiguring the debugging system at run-time to save the time required for design re-compilation as well as preserve the timing closure. The second contribution presents a solution for communication-centric designs. Furthermore, solutions for designs with multi-clock domains are also discussed. The third contribution presents a priority-based signal selection methodology to identify the signals which can be more helpful during the debugging process. A connectivity generation tool is also presented which can map the identified signals to the debugging system. The fourth contribution presents an automated error detection solution which can help in capturing the permanent as well as intermittent errors without continuous monitoring of debugging data. The proposed solution works for designs even in the absence of golden reference. The fifth contribution proposes to use artificial intelligence for post-silicon debugging. We presented a novel idea of using a recurrent neural network for debugging when a golden reference is present for training the network. Furthermore, the idea was also extended to designs where golden reference is not present

    The Design of a Debugger Unit for a RISC Processor Core

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    Recently, there has been a significant increase in design complexity for Embedded Systems often referred to as Hardware Software Co-Design. Complexity in design is due to both hardware and firmware closely coupled together in-order to achieve features for low power, high performance and low area. Due to these demands, embedded systems consist of multiple interconnected hardware IPs with complex firmware algorithms running on the device. Often such designs are available in bare-metal form, i.e without an Operating System, which results in difficulty while debugging due to lack of insight into the system. As a result, development cycle and time to market are increased. One of the major challenges for bare-metal design is to capture internal data required during debugging or testing in the post silicon validation stage effectively and efficiently. Post-silicon validation can be performed by leveraging on different technologies such as hardware software co-verification using hardware accelerators, FPGA emulation, logic analyzers, and so on which reduces the complete development cycle time. This requires the hardware to be instrumented with certain features which support debugging capabilities. As there is no standard for debugging capabilities and debugging infrastructure, it completely depends on the manufacturer to manufacturer or designer to designer. This work aims to implement minimum required features for debugging a bare-metal core by instrumenting the hardware compatible for debugging. It takes into consideration the fact that for a single core bare-metal embedded systems silicon area is also a constraint and there must be a trade-off between debugging capabilities which can be implemented in hardware and portions handled in software. The paper discusses various debugging approaches developed and implemented on various processor platforms and implements a new debugging infrastructure by instrumenting the Open-source AMBER 25 core with a set of debug features such as breakpoints, current state read, trace and memory access. Interface between hardware system and host system is designed using a JTAG standard TAP controller. The resulting design can be used in debugging and testing during post silicon verification and validation stages. The design is synthesized using Synopsys Design Compiler targeting a 65 nm technology node and results are compared for the instrumented and non-instrumented system

    Fault Injection for Embedded Microprocessor-based Systems

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    Microprocessor-based embedded systems are increasingly used to control safety-critical systems (e.g., air and railway traffic control, nuclear plant control, aircraft and car control). In this case, fault tolerance mechanisms are introduced at the hardware and software level. Debugging and verifying the correct design and implementation of these mechanisms ask for effective environments, and Fault Injection represents a viable solution for their implementation. In this paper we present a Fault Injection environment, named FlexFI, suitable to assess the correctness of the design and implementation of the hardware and software mechanisms existing in embedded microprocessor-based systems, and to compute the fault coverage they provide. The paper describes and analyzes different solutions for implementing the most critical modules, which differ in terms of cost, speed, and intrusiveness in the original system behavio
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