Lyft, Inc.
DETERMINING TRAFFIC CONTROL FEATURES BASED ON TELEMETRY PATTERNS WITHIN DIGITAL IMAGE REPRESENTATIONS OF VEHICLE TELEMETRY DATA

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Abstract:

The present disclosure relates to systems, methods, and non-transitory computer readable media for identifying traffic control features based on telemetry patterns within digital image representations of vehicle telemetry information. The disclosed systems can generate a digital image representation based on collected telemetry information to represent the frequency of different speed-location combinations for transportation vehicles passing through a traffic area. The disclosed systems can also apply a convolutional neural network to analyze the digital image representation and generate a predicted classification of a type of traffic control feature that corresponds to the digital image representation of vehicle telemetry information. The disclosed systems further train the convolutional neural network to determine traffic control features based on training data.

Status:
Application
Type:

Utility

Filling date:

27 Apr 2021

Issue date:

2 Sep 2021