Parallel Detection for Efficient Video Analytics at the Edge
Yanzhao Wu, Ling Liu, Ramana Kompella

TL;DR
This paper proposes a multi-model multi-device parallel detection approach to improve real-time object detection performance on heterogeneous edge devices, addressing latency and quality issues in mission-critical video analytics.
Contribution
It introduces a novel multi-model detection parallelism technique that accelerates detection rates on edge devices, enabling near real-time video analytics performance.
Findings
Speedup in detection processing rate with multi-model parallelism
Near real-time detection achieved on heterogeneous edge devices
Effective performance optimization demonstrated on SSD300 and YOLOv3
Abstract
Deep Neural Network (DNN) trained object detectors are widely deployed in many mission-critical systems for real time video analytics at the edge, such as autonomous driving and video surveillance. A common performance requirement in these mission-critical edge services is the near real-time latency of online object detection on edge devices. However, even with well-trained DNN object detectors, the online detection quality at edge may deteriorate for a number of reasons, such as limited capacity to run DNN object detection models on heterogeneous edge devices, and detection quality degradation due to random frame dropping when the detection processing rate is significantly slower than the incoming video frame rate. This paper addresses these problems by exploiting multi-model multi-device detection parallelism for fast object detection in edge systems with heterogeneous edge devices.…
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Taxonomy
TopicsAdvanced Neural Network Applications · Age of Information Optimization · COVID-19 diagnosis using AI
MethodsConvolution · Batch Normalization · Residual Connection · Average Pooling · Global Average Pooling · Logistic Regression · k-Means Clustering · Softmax · 1x1 Convolution · BNB Customer Service Number +1-833-534-1729
