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On this page
  • Upload multi-label samples
  • 1. Using the CSV Wizard
  • 2. Using Edge Impulse info.labels description file
  • 2. Using Edge Impulse structured_labels.labels description file
  • Visualizing multi-label samples
  • Edit multi-label samples
  • Classify multi-label data
  • Limitations
  • Resources
  1. Edge Impulse Studio
  2. Data acquisition

Multi-label (Time-series)

PreviousCSV Wizard (Time-series)NextTabular data (Pre-processed & Non-time-series)

Last updated 6 months ago

The multi-label feature brings considerable value by preserving the context of longer data samples, simplifying data preparation, and enabling more efficient and effective data analysis.

The first improvement is in the way you can analyze and process complex datasets, especially for applications where context and continuity are crucial. With this feature, you can maintain the integrity of longer-duration samples, such as hour-long exercise sessions or night-long sleep studies, without the need to segment these into smaller fragments every time there is a change in activity. This holistic view not only preserves the context but also provides a richer data set for analysis.

Then, the ability to select window sizes directly in Edge Impulse addresses a common pain point - data duplication. Without the multi-label feature, you need to pre-process data, either externally or using , creating multiple copies of the same data with different window sizes to determine the optimal configuration. This process is not only time-consuming but also prone to errors and inefficiencies. With multi-label samples, adjusting the window size becomes a simple parameter change in the "", streamlining the process significantly. This flexibility saves time, reduces the risk of errors, and allows for more dynamic experimentation with data, leading to potentially more accurate and insightful models.

Upload multi-label samples

1. Using the CSV Wizard

For example:

seconds_elapsed,    accX,   accY,    accZ,    label

0.00,               0.14642,-0.01645,-0.00858,idle
0.16,               0.15051,-0.01149,-0.00345,idle
0.32,               0.15546,-0.02141,-0.00342,idle
...
20.48,              0.14347,-0.03758,-0.00369,running
20.56,              0.13447,-0.01657,-0.01520,running
20.72,              0.11453,-0.00961,-0.01021,running

2. Using Edge Impulse info.labels description file

The other way is to create a info.labels file, present in your dataset. Edge Impulse will automatically detect it when you upload your dataset and will use this file to set the labels.

The info.labels looks like the following:

{
    "version": 1,
    "files": [{
        "path": "audio1.wav",
        "category": "split",
        "label": {
                "type": "multi-label",
                "labels": [
                    {
                        "label": "noise",
                        "startIndex": 0,
                        "endIndex": 5000
                    },
                    {
                        "label": "nominal_mode",
                        "startIndex": 5001
                        "endIndex": 60000
                    },
                    {
                        "label": "defect",
                        "startIndex": 60001
                        "endIndex": 60200
                    }
                ],
        "metadata": {
            "site_collected": "Factory_01"
            }
        }
    },
    {
        "path": "audio2.wav",
        "category": "split",
        "label": {
                "type": "multi-label",
                "labels": [
                    {
                        "label": "noise",
                        "startIndex": 0,
                        "endIndex": 2000
                    },
                    {
                        "label": "nominal_mode",
                        "startIndex": 2001
                        "endIndex": 40000
                    }
                ],
        "metadata": {
            "site_collected": "Factory_02"
            }
        }
    },
    ]
}

Tip

You can export a public project dataset that uses the multi-label feature to understand how the info.labels is structured.

Once you have your info.labels file available, to upload it, you can use:

The Studio Uploader will automatically detect the info.labels file:

> edge-impulse-uploader * --info-file info.labels

Edge Impulse uploader v1.23.0
Endpoints:
    API:         https://studio.edgeimpulse.com
    Ingestion:   https://ingestion.edgeimpulse.com

Upload configuration:
    Label:       Not set, will be inferred from file name
    Category:    training
    Project:     Example Multi-label upload (ID: XXXXX)

[ 1/11] Uploading training/machine_multilabel_8.json OK (1589 ms)
[ 2/11] Uploading testing/machine_multilabel_3.json OK (2024 ms)
[ 3/11] Uploading training/machine_multilabel_6.json OK (2176 ms)
[ 4/11] Uploading training/machine_multilabel_2.json OK (2224 ms)
[ 5/11] Uploading testing/machine_multilabel_1.json OK (2394 ms)
[ 6/11] Uploading training/machine_multilabel_8.json OK (2395 ms)
[ 7/11] Uploading training/machine_multilabel_9.json OK (2485 ms)
[ 8/11] Uploading training/machine_multilabel_7.json OK (2603 ms)
[ 9/11] Uploading testing/machine_multilabel_4.json OK (2617 ms)
[10/11] Uploading training/machine_multilabel_11.json OK (3426 ms)
[11/11] Uploading training/machine_multilabel_10.json OK (3488 ms)

Done. Files uploaded successful: 11. Files that failed to upload: 0.

2. Using Edge Impulse structured_labels.labels description file

The structured_labels.labels format looks like the following:

{
    "version": 1,
    "type": "structured-labels",
    "structuredLabels": {
        "updown.3.json": [{
            "startIndex": 0,
            "endIndex": 300,
            "label": "first_label"
        }, {
            "startIndex": 301,
            "endIndex": 621,
            "label": "second_label"
        }]
    }
}

Then you can run the following command:

curl -X POST \
    -H "x-api-key: $EI_PROJECT_API_KEY" \
    -H "Content-Type: multipart/form-data" \
    -F "data=@updown.3.json" \
    -F "data=@structured_labels.labels" \
    https://ingestion.edgeimpulse.com/api/training/files

Visualizing multi-label samples

Please note that you can also hide the sensors in the graph:

Edit multi-label samples

To edit the labels using the UI, click ⋮ -> Edit labels. The following model will appear:

Please note that you will need to provide continuous and non-overlapping labels for the full length of your data sample.

The format is the like following:

[
    {
        "label": "label 1",
        "startMs": 0,
        "endMs": 2000
    },
    {
        "label": "label 2",
        "startMs": 2001,
        "endMs": 4000
    },
    {
        "label": "label 3",
        "startMs": 4001,
        "endMs": 4500
    }
]

Classify multi-label data

In the Live classification tab, you can classify your multi-label test samples:

Limitations

  • Labeling UI is available but is only text-based.

  • Overlapping labels are not supported

  • The entire data sample needs to have a label, you cannot leave parts unlabeled.

Please, leave us a note on the forum or feedback using the "?" widget (bottom-right corner) if you see a need or an issue. This can help us prioritize the development or improvement of the features.

Resources

Public projects

If your dataset is in the CSV format and contains a label column, the is probably the easiest method to import your multi-label data.

Once your CSV Wizard is configured, you can use the , the or the :

Check the section for multi-label public projects.

The :

The :

If you want to use the , you need to use the structured_labels.labels format:

You can have a look at this tutorial for a better understanding: .

CSV Wizard
Studio Uploader
CLI Uploader
Ingestion API
Studio Uploader
CLI Uploader
Ingestion API
Ingest multi-label data with Edge Impulse API
Coffee Machine Stages - Multi-label data
Resources
transformation jobs
Impulse design
Multi-label
Multi-label workflow
Studio Uploader multi-label dataset
Multi-label sample preview
Multi-label sample preview - Hide sensors
Edit labels
Test multi-label sampled