Litcius/Paper detail

Flexible high-resolution object detection on edge devices with tunable latency

Shiqi Jiang, Zhiqi Lin, Yuanchun Li, Yuanchao Shu, Yunxin Liu

202198 citationsDOI

Abstract

Object detection is a fundamental building block of video analytics applications. While Neural Networks (NNs)-based object detection models have shown excellent accuracy on benchmark datasets, they are not well positioned for high-resolution images inference on resource-constrained edge devices. Common approaches, including down-sampling inputs and scaling up neural networks, fall short of adapting to video content changes and various latency requirements. This paper presents Remix, a flexible framework for high-resolution object detection on edge devices. Remix takes as input a latency budget, and come up with an image partition and model execution plan which runs off-the-shelf neural networks on non-uniformly partitioned image blocks. As a result, it maximizes the overall detection accuracy by allocating various amount of compute power onto different areas of an image. We evaluate Remix on public dataset as well as real-world videos collected by ourselves. Experimental results show that Remix can either improve the detection accuracy by 18%-120% for a given latency budget, or achieve up to 8.1× inference speedup with accuracy on par with the state-of-the-art NNs.

Topics & Concepts

Computer scienceSpeedupObject detectionLatency (audio)InferenceArtificial intelligenceBenchmark (surveying)Artificial neural networkEdge computingEdge deviceDeep neural networksPartition (number theory)Computer engineeringComputer visionEnhanced Data Rates for GSM EvolutionPattern recognition (psychology)Parallel computingCloud computingTelecommunicationsOperating systemGeodesyGeographyMathematicsCombinatoricsAdvanced Neural Network ApplicationsAdvanced Image Processing TechniquesAdversarial Robustness in Machine Learning