Self-Cueing Real-Time Attention Scheduling in Criticality-Aware Visual Machine Perception

2022 IEEE 28th Real-Time and Embedded Technology and Applications Symposium (RTAS)(2022)

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摘要
This paper presents a self-cueing real-time frame-work for attention prioritization in AI-enabled visual perception systems that minimizes a notion of state uncertainty. By attention prioritization we refer to inspecting some parts of the scene before others in a criticality-aware fashion. By self-cueing, we refer to not needing external cueing sensors for prioritizing attention, thereby simplifying design. We show that attention prioritization saves resources, thus enabling more efficient and responsive real-time object tracking on resource-limited embedded platforms. The system consists of two components: First, an optical flow-based module decides on the regions to be viewed on a subframe level, as well as their criticality. Second, a novel batched proportional balancing (BPB) scheduling policy decides how to schedule these regions for inspection by a deep neural network (DNN), and how to parallelize execution on the GPU. We implement the system on an NVIDIA Jetson Xavier platform, and empirically demonstrate the superiority of the proposed architecture through an extensive evaluation using a real-word driving dataset.
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关键词
proportional balancing scheduling policy,self-cueing,real-time attention scheduling,criticality-aware visual machine perception,real-time frame-work,attention prioritization,AI-enabled visual perception systems,criticality-aware fashion,external cueing sensors,prioritizing attention,real-time object tracking,resource-limited embedded platforms
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