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Deep autoencoder for false positive reduction in handgun detection

Noelia Vállez, Alberto Velasco-Mata, Óscar Déniz

2020Neural Computing and Applications24 citationsDOIOpen Access PDF

Abstract

Abstract In an object detection system, the main objective during training is to maintain the detection and false positive rates under acceptable levels when the model is run over the test set. However, this typically translates into an unacceptable rate of false alarms when the system is deployed in a real surveillance scenario. To deal with this situation, which often leads to system shutdown, we propose to add a filter step to discard part of the new false positive detections that are typical of the new scenario. This step consists of a deep autoencoder trained with the false alarm detections generated after running the detector over a period of time in the new scenario. Therefore, this step will be in charge of determining whether the detection is a typical false alarm of that scenario or whether it is something anomalous for the autoencoder and, therefore, a true detection. In order to decide whether a detection must be filtered, three different approaches have been tested. The first one uses the autoencoder reconstruction error measured with the mean squared error to make the decision. The other two use the k -NN ( k -nearest neighbors) and one-class SVMs (support vector machines) classifiers trained with the autoencoder vector representation. In addition, a synthetic scenario has been generated with Unreal Engine 4 to test the proposed methods in addition to a dataset with real images. The results obtained show a reduction in the number of false positives between 22.5% and 87.2% and an increase in the system’s precision of 1.2% $$-47$$ <mml:math xmlns:mml="http://www.w3.org/1998/Math/MathML"> <mml:mrow> <mml:mo>-</mml:mo> <mml:mn>47</mml:mn> </mml:mrow> </mml:math> % when the autoencoder is applied.

Topics & Concepts

AutoencoderComputer scienceArtificial intelligenceFalse positive paradoxPattern recognition (psychology)False alarmFalse positive rateConstant false alarm rateReduction (mathematics)Support vector machineTest setFilter (signal processing)Machine learningDeep learningComputer visionMathematicsGeometryAnomaly Detection Techniques and ApplicationsFire Detection and Safety SystemsAdversarial Robustness in Machine Learning
Deep autoencoder for false positive reduction in handgun detection | Litcius