Patents Assigned to SafeAI, Inc.
  • Publication number: 20200181879
    Abstract: The present disclosure relates generally to techniques for the kinematic estimation and dynamic behavior estimation of autonomous heavy equipment or vehicles to improve navigation, digging and material carrying tasks at various industrial work sites. Particularly, aspects of the present disclosure are directed to obtaining a set of sensor data providing a representation of operation of an autonomous vehicle in a worksite environment, estimating, by a trained model comprising a Gaussian process, a set of output data based on the set of sensor data, controlling an operation of the autonomous vehicle in the worksite environment using input data derived from the set of sensor data and the set of output data, obtaining actual output data from the operation of the autonomous vehicle in the worksite environment, and updating the trained model with the input data and the actual output data.
    Type: Application
    Filed: December 10, 2019
    Publication date: June 11, 2020
    Applicant: SafeAI, Inc.
    Inventors: Bibhrajit Halder, Sudipta Mazumdar
  • Publication number: 20200150687
    Abstract: The present disclosure relates generally to autonomous machines (AMs) and more particularly to techniques for intelligently planning, managing and performing various tasks using AMs. A control system (referred to as a fleet management system or FMS) is disclosed for managing a set of resources at a site, which may include AMs. The FMS is configured to control and manage the AMs at the site such that tasks are performed autonomously by the AMs. An AM may directly communicate with another AM located on the site to complete a task without requiring to be in constant communication with the FMS during the performance of the task. The FMS is configured to use various optimization techniques to allocate resources (e.g., AMs) for performing tasks at the site. The resource allocation is performed so as to maximize the use of available AMs while ensuring that the tasks get performed in a timely manner.
    Type: Application
    Filed: November 8, 2019
    Publication date: May 14, 2020
    Applicant: SafeAI, Inc.
    Inventors: Bibhrajit Halder, Sudipta Mazumdar
  • Publication number: 20200111169
    Abstract: The present disclosure relates generally to systems for facilitating the use of autonomous vehicles (AVs), and more particularly to automated artificial intelligence (AI)-based techniques for determining an insurance premium for an AV ride based upon various factors including the evaluation of risk associated with the AV ride. An automated AI-based infrastructure is provided that uses automated machine-learning (ML) based techniques for evaluating a level of risk for any particular AV ride and then determining an insurance premium for the AV ride based on the level of risk. The insurance premium determination incorporates Usage Based Insurance Pricing (UBIP) that has been customized for autonomous driving, whereby the level of risk is predicted based on information associated with the expected usage of the AV during the ride. Thus, the insurance premium is customized for each ride and can be determined as part of calculating upfront the total price of the ride.
    Type: Application
    Filed: October 9, 2019
    Publication date: April 9, 2020
    Applicant: SafeAI, Inc.
    Inventors: Bibhrajit Halder, Sudipta Mazumdar
  • Publication number: 20190310650
    Abstract: An infrastructure is provided for improving the safety of autonomous systems. An autonomous vehicle management system (AVMS) controls one or more autonomous functions or operations performed by a vehicle or machine such that the autonomous operations are performed in a safe manner. The AVMS uses various artificial intelligence (AI) based techniques (e.g., neural networks, reinforcement learning (RL) techniques, etc.) and models as part of its processing. For an inferring data point, for which a prediction is made by AVMS using an AI model, the AVMS checks how statistically similar (or dissimilar) the inferring data point is to the distribution of the training dataset. A score (confidence score) is generated indicative of how similar or dissimilar the inferring data point is to the training dataset. The AVMS uses this confidence score to decide how the prediction made by the AI model is to be used.
    Type: Application
    Filed: April 8, 2019
    Publication date: October 10, 2019
    Applicant: SafeAI, Inc.
    Inventor: Bibhrajit Halder
  • Publication number: 20190310654
    Abstract: Techniques are described herein for determining one or more actions for an autonomous vehicle to perform, based on simulation of at least one possible scenario. A possible scenario may involve, for example, the autonomous vehicle interacting with an object in the environment. The possible scenario may be simulated by modifying a first internal map containing information about the autonomous vehicle and the environment. As part of the simulation, one or more parameters of the first internal map can be modified in order to, for example, determine the state of the object at a particular point in the future. Based on the modification of the one or more parameters, a second internal map representing a possible scenario is generated from the first internal map. Both the first internal map and the second internal map can be evaluated to decide which action to take.
    Type: Application
    Filed: April 8, 2019
    Publication date: October 10, 2019
    Applicant: SafeAI, Inc.
    Inventor: Bibhrajit Halder
  • Publication number: 20190310649
    Abstract: In one aspect, a computer-implemented method useful for managing autonomous vehicle application operations with reinforcement learning (RL) methods, the method includes the step of providing an autonomous vehicle application of an autonomous vehicle, wherein the autonomous vehicle application manages a final action of a specified operation of the autonomous vehicle. The method includes the step of generating an RL model-agent for the specified operation. The RL model-agent learns by a maximizing rewards function related to the specified operation. The method includes the step of generating and managing a Safety Sanity Index (SSI) that monitors the safety performance of RL model. The method includes the step of obtaining an observed state of the autonomous vehicle, and generating an interruptible command based on the SSI and the observed state.
    Type: Application
    Filed: September 6, 2018
    Publication date: October 10, 2019
    Applicant: SafeAI, Inc.
    Inventor: Bibhrajit Halder