18205035. TRAINING DATA GENERATION APPARATUS simplified abstract (NEC Corporation)

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TRAINING DATA GENERATION APPARATUS

Organization Name

NEC Corporation

Inventor(s)

Manabu Nakanoya of Tokyo (JP)

TRAINING DATA GENERATION APPARATUS - A simplified explanation of the abstract

This abstract first appeared for US patent application 18205035 titled 'TRAINING DATA GENERATION APPARATUS

Simplified Explanation

The training data generation apparatus described in the patent application uses spatial data of an actual object to train a generative model for converting spatial data to a feature vector and vice versa. It also generates samples of the feature vector based on a probability distribution defined by a set of parameters, and uses these samples to generate training data for object recognition models.

  • The apparatus uses spatial data of an object to train a generative model.
  • It converts spatial data to a feature vector and vice versa.
  • Samples of the feature vector are generated based on a probability distribution.
  • These samples are used to create training data for object recognition models.

Potential Applications

The technology described in the patent application could have the following potential applications:

  • Object recognition systems
  • Image processing applications
  • Machine learning algorithms

Problems Solved

The technology addresses the following problems:

  • Efficient conversion between spatial data and feature vectors
  • Generation of training data for object recognition models
  • Improving the accuracy of object recognition systems

Benefits

The technology offers the following benefits:

  • Improved object recognition accuracy
  • Automated generation of training data
  • Enhanced image processing capabilities

Potential Commercial Applications

The technology could be applied in various commercial settings, such as:

  • Security systems for object recognition
  • Medical imaging for diagnostic purposes
  • Autonomous vehicles for object detection

Unanswered Questions

What are the limitations of the generative model in handling complex spatial data?

How does the training data generation apparatus handle noise or inaccuracies in the spatial data of objects?

Original Abstract Submitted

A training data generation apparatus uses spatial data of an actual object and thereby trains a generative model to perform conversion from the spatial data to a feature vector and conversion from the feature vector to spatial data. Moreover, the training data generation apparatus generates a sample of the feature vector as a realization value of a probability distribution defined by a set of parameters. Moreover, the training data generation apparatus generates training data used in training for an object recognition model based on the spatial data output from the generative model when the generated sample of the feature vector is input into the generative model.