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VAX - Using Existing Video and Audio-based Activity Recognition Models to Bootstrap Privacy-Sensitive Sensors

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VAX: Using Existing Video and Audio-based Activity Recognition Models to Bootstrap Privacy-Sensitive Sensors

[paper (IMWUT 2023)]

Authors: [Prasoon Patidar] [Mayank Goel] [Yuvraj Agarwal]

Abstract: The use of audio and video modalities for Human Activity Recognition (HAR) is common, given the richness of the data and the availability of pre-trained ML models using a large corpus of labeled training data. However, audio and video sensors also lead to significant consumer privacy concerns. Researchers have thus explored alternate modalities that are less privacy-invasive such as mmWave doppler radars, IMUs, motion sensors. However, the key limitation of these approaches is that most of them do not readily generalize across environments and require significant in-situ training data. Recent work has proposed cross-modality transfer learning approaches to alleviate the lack of trained labeled data with some success. In this paper, we generalize this concept to create a novel system called VAX (Video/Audio to ‘X’), where training labels acquired from existing Video/Audio ML models are used to train ML models for a wide range of ‘X’ privacy-sensitive sensors. Notably, in VAX, once the ML models for the privacy-sensitive sensors are trained, with little to no user involvement, the Audio/Video sensors can be removed altogether to protect the user’s privacy better. We built and deployed VAX in ten participants’ homes while they performed 17 common activities of daily living. Our evaluation results show that after training, VAX can use its onboard camera and microphone to detect approximately 15 out of 17 activities with an average accuracy of 90%. For these activities that can be detected using a camera and a microphone, VAX trains a per-home model for the privacy-preserving sensors. These models (average accuracy = 84%) require no in-situ user input. In addition, when VAX is augmented with just one labeled instance for the activities not detected by the VAX A/V pipeline (∼2 out of 17), it can detect all 17 activities with an average accuracy of 84%. Our results show that VAX is significantly better than a baseline supervised-learning approach of using one labeled instance per activity in each home (average accuracy of 79%) since VAX reduces the user burden of providing activity labels by 8x (∼2 labels vs. 17 labels).

Source Code Architecture

The source code for VAX is broken into 3 independent modules.

  • M1. Data Collection: Collecting data across variety of sensing modalities with real-time ground truth annotation. It also Preprocess collected data into activity instances, combining input across all sensors, and create visualization of activity instance raw data.
  • M2. Generating (A/V) labels: Using raw A/V data for activity instances, and off-the-shelf pretrained models for activity recognition to generate A/V labels for collected instances.
  • M3. Building self-supervised models (VAX pipeline): Given A/V labels using VAX A/V ensemble, and preprocessed raw data for sensors, train VAX pipeline for activity recognition using privacy sensitive sensors.

Flowchart for training VAX Pipeline in a new home.

NOTE: VAX can be used directly to build in-situ models for privacy-sensitive sensors using public av_ensemble created by authors for activities mentioned in the paperwithout re-training on reference homes, unless we need to train for new set of activities not included in original paper.

%%{init: {"flowchart": {"htmlLabels": false}} }%%
flowchart LR
    Home(["M1. Data Collection"])
    Deploysensors([VAX Hardware Deployment])
    AV(["M2. A/V labels off-the-shelf models"])
    DP(["M1. Data Preprocessing"])   
    finalensemble{{VAX A/V Ensemble}}
    style finalensemble fill:#f92,stroke:#333,stroke-width:4px
    vaxav{{M3. Training VAX Pipeline}}
    vaxmodel([Final VAX Model for privacy-preserving sensors])
    style vaxmodel fill:#29f,stroke:#333,stroke-width:4px
    activityfromav[M2. Activity labels from A/V Ensemble]
    rawdatafromx[M3. Featurized data for privacy-sensitive sensors]
    subgraph "🏠 Home deployment for VAX"  
      Deploysensors --> Home --> DP--> AV --> activityfromav
      finalensemble --> activityfromav
      activityfromav --> vaxav
      DP --> rawdatafromx --> vaxav
      vaxav --> vaxmodel
    end

Loading

Each module, further is divided into 4 sections as follows:

  • Workbench Setup: It consists of hardware/software requirement for each module, as well as expected input for each module.
  • Module Configuration: It consists instruction for customizing module runtime for different settings and user needs.
  • Running Scripts: This sections provides instructions for running module scripts.
  • Understanding Module Output: Finally, this sections shows details on expected output after running the module.

For instructions and more details on each module. Please refer to instructions in individual module directories (Links provided above).

Using Individual Modules beyond VAX

Each of these modules can be run independent of each other and can be used for further research beyond VAX, like:

  • Data handling for privacy-sensitive sensors: The first module (Data collection) can be used for any downstream tasks which utilizes sensing data across multiple sensing modalities.
  • Combining predictions from off-the-shelf models for any other task: Module two (Generating (A/V) labels) can be used independent of collecting any data from privacy-sensitive sensors for combining multiple off-the-shelf HAR models for given set of pre-defined activities. Please look at Section 4.1 & 4.2 on HAR using off-the-shelf A/V models in the paper.

Reference

@INPROCEEDINGS{patidar23vax,
    title = {VAX: Using Existing Video and Audio-based Activity Recognition Models to Bootstrap Privacy-Sensitive Sensors},
    author = {Prasoon Patidar and Mayank Goel and Yuvraj Agarwal},
    journal = {Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies}
    year = {2023},
    publisher = {ACM},
    address = {Cancun, Mexico},
    article = {117},
    volume = {7},
    number = {3},
    month = {9},
    doi = {https://doi.org/10.1145/3610907},
    pages = {213–224},
    numpages = {24},
    keywords = { ubiquitous sensing, privacy first design, human activity recognition},
}

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