US Patent Application 17846232. METHOD FOR DETECTING ROAD CONDITIONS AND ELECTRONIC DEVICE simplified abstract

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METHOD FOR DETECTING ROAD CONDITIONS AND ELECTRONIC DEVICE

Organization Name

HON HAI PRECISION INDUSTRY CO., LTD.

Inventor(s)

SHIH-CHAO Chien of New Taipei (TW)

CHIN-PIN Kuo of New Taipei (TW)

METHOD FOR DETECTING ROAD CONDITIONS AND ELECTRONIC DEVICE - A simplified explanation of the abstract

This abstract first appeared for US patent application 17846232 titled 'METHOD FOR DETECTING ROAD CONDITIONS AND ELECTRONIC DEVICE

Simplified Explanation

- The patent application describes a method for detecting road conditions using an electronic device. - The device captures images of the scene in front of a vehicle and inputs them into a trained semantic segmentation model. - The device uses a backbone network for feature extraction and obtains multiple feature maps. - These feature maps are then processed by a first segmentation network and a second segmentation network within the head network. - The first segmentation network outputs a recognition result, while the second segmentation network outputs another recognition result. - The device then determines whether it is safe for the vehicle to continue driving based on these recognition results.


Original Abstract Submitted

A method for detecting road conditions applied in an electronic device obtains images of a scene in front of a vehicle, and inputs the images into a trained semantic segmentation model. The electronic device inputs the images into a backbone network for feature extraction and obtains a plurality of feature maps, inputs the feature maps into the head network, processes the feature maps by a first segmentation network of the head network, and outputs a first recognition result. The electronic device further processes the feature maps by a second segmentation network of the head network, and outputs a second recognition result, and determines whether the vehicle can continue to drive on safely according to the first recognition result and the second recognition result.