Method for determining images plausible to have a false negative object detection

    公开(公告)号:US12190590B2

    公开(公告)日:2025-01-07

    申请号:US17675019

    申请日:2022-02-18

    Applicant: Axis AB

    Abstract: A method for determining images plausible to have a false negative object detection comprises providing a group of historic trajectories, wherein each historic trajectory comprises a reference track that represents one or more historic tracks and comprises an object class of historic object detections that belong to the one or more historic tracks; performing tracking; performing object detection; for a determined track that does not match any determined object detection, comparing the determined track with reference tracks of historic trajectories for identifying a matching reference track; upon identifying a matching reference track, defining images of the determined track as being plausible to have a false negative object detection for the object class of the historic trajectory comprising the matching reference track; and upon not identifying a matching reference track, defining the determined track as a false positive track.

    Artificial neural network class-based pruning

    公开(公告)号:US10552737B2

    公开(公告)日:2020-02-04

    申请号:US15851173

    申请日:2017-12-21

    Applicant: AXIS AB

    Abstract: Methods and apparatus, including computer program products, implementing and using techniques for configuring an artificial neural network to a particular surveillance situation. A number of object classes characteristic for the surveillance situation are selected. The object classes form a subset of the total number of object classes for which the artificial neural network is trained. A database is accessed that includes activation frequency values for the neurons within the artificial neural network. The activation frequency values are a function of the object class. Those neurons having activation frequency values lower than a threshold value for the subset of selected object classes are removed from the artificial neural network.

    ARTIFICIAL NEURAL NETWORK CLASS-BASED PRUNING

    公开(公告)号:US20180181867A1

    公开(公告)日:2018-06-28

    申请号:US15851173

    申请日:2017-12-21

    Applicant: AXIS AB

    Abstract: Methods and apparatus, including computer program products, implementing and using techniques for configuring an artificial neural network to a particular surveillance situation. A number of object classes characteristic for the surveillance situation are selected. The object classes form a subset of the total number of object classes for which the artificial neural network is trained. A database is accessed that includes activation frequency values for the neurons within the artificial neural network. The activation frequency values are a function of the object class. Those neurons having activation frequency values lower than a threshold value for the subset of selected object classes are removed from the artificial neural network.

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