5,127 research outputs found

    ANALYSIS AND APPLICATIONS OF BINARY PERIODIC ORBITS IN DYNAMIC BINARY NEURAL NETWORKS

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    This paper studies basic dynamics of simple dynamic binary neural networks and their applications. The network is characterized by local binary connection and signum activation function. Depending on the parameters and initial condition, the network can generate various binary periodic orbits. The binary connection is suitable for FPGA based hardware implementation. We consider two target periodic orbits based on the insect walking gaits and switching of them. Implementing a test circuit on the Verilog, switching of the periodic orbits is confirmed experimentally. These results will be developed into applications to central pattern generators

    PCA-RECT: An Energy-efficient Object Detection Approach for Event Cameras

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    We present the first purely event-based, energy-efficient approach for object detection and categorization using an event camera. Compared to traditional frame-based cameras, choosing event cameras results in high temporal resolution (order of microseconds), low power consumption (few hundred mW) and wide dynamic range (120 dB) as attractive properties. However, event-based object recognition systems are far behind their frame-based counterparts in terms of accuracy. To this end, this paper presents an event-based feature extraction method devised by accumulating local activity across the image frame and then applying principal component analysis (PCA) to the normalized neighborhood region. Subsequently, we propose a backtracking-free k-d tree mechanism for efficient feature matching by taking advantage of the low-dimensionality of the feature representation. Additionally, the proposed k-d tree mechanism allows for feature selection to obtain a lower-dimensional dictionary representation when hardware resources are limited to implement dimensionality reduction. Consequently, the proposed system can be realized on a field-programmable gate array (FPGA) device leading to high performance over resource ratio. The proposed system is tested on real-world event-based datasets for object categorization, showing superior classification performance and relevance to state-of-the-art algorithms. Additionally, we verified the object detection method and real-time FPGA performance in lab settings under non-controlled illumination conditions with limited training data and ground truth annotations.Comment: Accepted in ACCV 2018 Workshops, to appea
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