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Event Density Based Denoising Method for Dynamic Vision Sensor

Yang Feng, Hengyi Lv, Hailong Liu, Yisa Zhang, Yuyao Xiao, Chengshan Han

2020Applied Sciences92 citationsDOIOpen Access PDF

Abstract

Dynamic vision sensor (DVS) is a new type of image sensor, which has application prospects in the fields of automobiles and robots. Dynamic vision sensors are very different from traditional image sensors in terms of pixel principle and output data. Background activity (BA) in the data will affect image quality, but there is currently no unified indicator to evaluate the image quality of event streams. This paper proposes a method to eliminate background activity, and proposes a method and performance index for evaluating filter performance: noise in real (NIR) and real in noise (RIN). The lower the value, the better the filter. This evaluation method does not require fixed pattern generation equipment, and can also evaluate filter performance using natural images. Through comparative experiments of the three filters, the comprehensive performance of the method in this paper is optimal. This method reduces the bandwidth required for DVS data transmission, reduces the computational cost of target extraction, and provides the possibility for the application of DVS in more fields.

Topics & Concepts

Computer scienceComputer visionArtificial intelligenceNoise reductionImage sensorNoise (video)Filter (signal processing)Median filterReal-time computingImage processingImage (mathematics)CCD and CMOS Imaging SensorsAdvanced Memory and Neural ComputingInfrared Target Detection Methodologies
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