Deep Learning Result Parser

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Function

This Step is used to parse the inference results of a multi-model package or a multi-class defect segmentation model package output by the "Deep Learning Model Package Inference" Step. After parsing, this Step splits the output results by model package type or defect class, facilitating independent processing, statistics, and viewing by subsequent Steps.

Usage Scenario

This Step follows the "Deep Learning Model Package Inference" Step and is used to parse and view the inference results of a multi-model package or a multi-class defect segmentation model package.

This Step can only parse the inference results of one defect class/model package type at a time. To parse the inference results of multiple defect classes or model packages simultaneously, please add and connect a separate instance of this Step for each defect class/model package output by the "Deep Learning Model Package Inference" Step to avoid missing any parsing results.

Input and Output

Input

Input ports Data type Description

Deep Learning Inference Result

DLResult

Deep learning inference result.

Output

The output ports are automatically generated based on the defect classes or model package types in the input data. No manual configuration is required. Please ensure the input data is correct to avoid unexpected output results.

Input Description

Input item Description

Deep Learning Inference Result

Deep learning inference result.

Output Description

The output ports are automatically generated based on the defect classes or model package types in the input data. No manual configuration is required. Please ensure the input data is correct to avoid unexpected output results.

Usage Examples

Multi-Class Defect Segmentation Result Parsing

The figure below shows how to parse the multi-class defect segmentation results output by the "Deep Learning Model Package Inference" Step. Taking a model that simultaneously detects scratches, bubbles, and dents as an example, each defect class is connected to a separate "Deep Learning Result Parser" Step for independent parsing.

deep learning result parser for multi class

Multi-Model Package Inference Result Parsing

The figure below shows how to parse the multi-model package inference results output by the "Deep Learning Model Package Inference" Step. Taking a multi-model package with text detection and text recognition in series as an example, each model package type is connected to a separate "Deep Learning Result Parser" Step for independent parsing.

deep learning result parser for multi model

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