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An example of deep object detection and tracking with a Raspberry Pi, PiCamera, and Pimoroni Pantilt Hat

Project description

Raspberry Pi Deep PanTilt

image

Documentation Status

READ THIS FIRST!

A detailed walk-through is available in Real-time Object Tracking with TensorFlow, Raspberry Pi, and Pan-tilt HAT.

Build List

An example of deep object detection and tracking with a Raspberry Pi

Basic Setup

Before you get started, you should have an up-to-date installation of Raspbian 10 (Buster) running on your Raspberry Pi. You'll also need to configure SSH access into your Pi.

Installation

  1. Install system dependencies
$ sudo apt-get update && sudo apt-get install -y \
    cmake python3-dev libjpeg-dev libatlas-base-dev raspi-gpio libhdf5-dev python3-smbus
  1. Create new virtual environment
$ python3 -m venv .venv
  1. Activate virtual environment
$ source .venv/bin/activate
  1. Upgrade setuptools
$ pip install --upgrade setuptools
  1. Install TensorFlow 2.2 (community-built wheel)
$ pip install https://github.com/leigh-johnson/Tensorflow-bin/releases/download/v2.2.0/tensorflow-2.2.0-cp37-cp37m-linux_armv7l.whl
  1. Install the rpi-deep-pantilt package.
pip install rpi-deep-pantilt
  1. Install Coral Edge TPU tflite_runtime (optional)

NOTE: This step is only required if you are using Coral's Edge TPU USB Accelerator. If you would like to run TFLite inferences using CPU only, skip this step.

$ pip install https://dl.google.com/coral/python/tflite_runtime-2.1.0.post1-cp37-cp37m-linux_armv7l.whl

=======

Configuration

WARNING: Do not skip this section! You will not be able to use rpi-deep-pantilt without properly configuring your Pi.

Enable Pi Camera

  1. Run sudo raspi-config and select Interfacing Options from the Raspberry Pi Software Configuration Tool’s main menu. Press ENTER.

raspi-config main menu

  1. Select the Enable Camera menu option and press ENTER.

raspi-config interfacing options menu

  1. In the next menu, use the right arrow key to highlight ENABLE and press ENTER.

raspi-config enable camera yes/no menu

Enable i2c in Device Tree

  1. Open /boot/config.txt and verify the following dtparams lines are uncommented:
dtparam=i2c1=on
dtparam=i2c_arm=on

Example Usage

Object Detection

The detect command will start a PiCamera preview and render detected objects as an overlay. Verify you're able to detect an object before trying to track it.

Supports Edge TPU acceleration by passing the --edge-tpu option.

rpi-deep-pantilt detect [OPTIONS] [LABELS]...

rpi-deep-pantilt detect --help
Usage: rpi-deep-pantilt detect [OPTIONS] [LABELS]...

  rpi-deep-pantilt detect [OPTIONS] [LABELS]

    LABELS (optional)     One or more labels to detect, for example:     
    $ rpi-deep-pantilt detect person book "wine glass"

    If no labels are specified, model will detect all labels in this list:
    $ rpi-deep-pantilt list-labels

    Detect command will automatically load the appropriate model

    For example, providing "face" as the only label will initalize
    FaceSSD_MobileNet_V2 model $ rpi-deep-pantilt detect face

    Other labels use SSDMobileNetV3 with COCO labels $ rpi-deep-pantilt detect
    person "wine class" orange

Options:
  --loglevel TEXT  Run object detection without pan-tilt controls. Pass
                   --loglevel=DEBUG to inspect FPS.
  --edge-tpu       Accelerate inferences using Coral USB Edge TPU
  --rotation INTEGER  PiCamera rotation. If you followed this guide, a
                      rotation value of 0 is correct.
                      https://medium.com/@grepLeigh/real-time-object-tracking-
                      with-tensorflow-raspberry-pi-and-pan-tilt-
                      hat-2aeaef47e134
  --help           Show this message and exit.

Object Tracking

The following will start a PiCamera preview, render detected objects as an overlay, and track an object's movement with Pimoroni pan-tilt HAT.

By default, this will track any person in the frame. You can track other objects by passing --label <label>. For a list of valid labels, run rpi-deep-pantilt list-labels.

rpi-deep-pantilt track

Supports Edge TPU acceleration by passing the --edge-tpu option.

Usage: rpi-deep-pantilt track [OPTIONS] [LABEL]

  rpi-deep-pantilt track [OPTIONS] [LABEL]

  LABEL (required, default: person) Exactly one label to detect, for example:     
  $ rpi-deep-pantilt track person

  Track command will automatically load the appropriate model

  For example, providing "face" will initalize FaceSSD_MobileNet_V2 model
  $ rpi-deep-pantilt track face

  Other labels use SSDMobileNetV3 model with COCO labels 
  $ rpi-deep-pantilt detect orange

Options:
  --loglevel TEXT  Pass --loglevel=DEBUG to inspect FPS and tracking centroid
                   X/Y coordinates
  --edge-tpu       Accelerate inferences using Coral USB Edge TPU
  --rotation INTEGER  PiCamera rotation. If you followed this guide, a
                      rotation value of 0 is correct.
                      https://medium.com/@grepLeigh/real-time-object-tracking-
                      with-tensorflow-raspberry-pi-and-pan-tilt-
                      hat-2aeaef47e134
  --help           Show this message and exit.

Valid labels for Object Detection/Tracking

rpi-deep-pantilt list-labels

The following labels are valid tracking targets.

['person', 'bicycle', 'car', 'motorcycle', 'airplane', 'bus', 'train', 'truck', 'boat', 'traffic light', 'fire hydrant', 'stop sign', 'parking meter', 'bench', 'bird', 'cat', 'dog', 'horse', 'sheep', 'cow', 'elephant', 'bear', 'zebra', 'giraffe', 'backpack', 'umbrella', 'handbag', 'tie', 'suitcase', 'frisbee', 'skis', 'snowboard', 'sports ball', 'kite', 'baseball bat', 'baseball glove', 'skateboard', 'surfboard', 'tennis racket', 'bottle', 'wine glass', 'cup', 'fork', 'knife', 'spoon', 'bowl', 'banana', 'apple', 'sandwich', 'orange', 'broccoli', 'carrot', 'hot dog', 'pizza', 'donut', 'cake', 'chair', 'couch', 'potted plant', 'bed', 'dining table', 'toilet', 'tv', 'laptop', 'mouse', 'remote', 'keyboard', 'cell phone', 'microwave', 'oven', 'toaster', 'sink', 'refrigerator', 'book', 'clock', 'vase', 'scissors', 'teddy bear', 'hair drier', 'toothbrush']

Face Detection (NEW in v1.1.x)

The following command will detect human faces.

NOTE: Face detection uses a specialized model (FaceSSD_MobileNet_V2), while other labels are detecting using SSDMobileNetV3_COCO. You cannot detect both face and COCO labels at this time.

Watch this repo for updates that allow you to re-train these models to support a custom mix of object labels!

rpi-deep-pantilt detect face
Usage: cli.py face-detect [OPTIONS]

Options:
  --loglevel TEXT  Run object detection without pan-tilt controls. Pass
                   --loglevel=DEBUG to inspect FPS.
  --edge-tpu       Accelerate inferences using Coral USB Edge TPU
  --help           Show this message and exit.

Face Tracking (NEW in v1.1.x)

The following command will track a human face.

rpi-deep-pantilt track face
Usage: cli.py face-detect [OPTIONS]

Options:
  --loglevel TEXT  Run object detection without pan-tilt controls. Pass
                   --loglevel=DEBUG to inspect FPS.
  --edge-tpu       Accelerate inferences using Coral USB Edge TPU
  --help           Show this message and exit.

Model Summary

The following section describes the models used in this project.

Object Detection & Tracking

FLOAT32 model (ssd_mobilenet_v3_small_coco_2019_08_14)

rpi-deep-pantilt detect and rpi-deep-pantilt track perform inferences using this model. Bounding box and class predictions render at roughly 6 FPS on a Raspberry Pi 4.

The model is derived from ssd_mobilenet_v3_small_coco_2019_08_14 in tensorflow/models. I extended the model with an NMS post-processing layer, then converted to a format compatible with TensorFlow 2.x (FlatBuffer).

I scripted the conversion steps in tools/tflite-postprocess-ops-float.sh.

Quantized UINT8 model (ssdlite_mobilenet_edgetpu_coco_quant)

If you specify --edge-tpu option, rpi-deep-pantilt detect and rpi-deep-pantilt track perform inferences using this model. Rounding box and class predictions render at roughly 24+ FPS (real-time) on Raspberry Pi 4.

This model REQUIRES a Coral Edge TPU USB Accelerator to run.

This model is derived from ssdlite_mobilenet_edgetpu_coco_quant in tensorflow/models. I reversed the frozen .tflite model into a protobuf graph to add an NMS post-processing layer, quantized the model in a .tflite FlatBuffer format, then converted using Coral's edgetpu_compiler tool.

I scripted the conversion steps in tools/tflite-postprocess-ops-128-uint8-quant.sh and tools/tflite-edgetpu.sh.

Face Detection & Tracking

I was able to use the same model architechture for FLOAT32 and UINT8 input, facessd_mobilenet_v2_quantized_320x320_open_image_v4_tflite2.

This model is derived from facessd_mobilenet_v2_quantized_320x320_open_image_v4 in tensorflow/models.

Common Issues

i2c is not enabled

If you run $ rpi-deep-pantilt test pantilt and see a similar error, check your Device Tree configuration.

File "/home/pi/projects/rpi-deep-pantilt/.venv/lib/python3.7/site-packages/pantilthat/pantilt.py", line 72, in setup
self._i2c = SMBus(1)
FileNotFoundError: [Errno 2] No such file or directory

Open /boot/config.txt and ensure the following lines are uncommented:

dtparam=i2c1=on
dtparam=i2c_arm=on

Credits

The MobileNetV3-SSD model in this package was derived from TensorFlow's model zoo, with post-processing ops added.

The PID control scheme in this package was inspired by Adrian Rosebrock tutorial Pan/tilt face tracking with a Raspberry Pi and OpenCV

This package was created with Cookiecutter and the audreyr/cookiecutter-pypackage project template.

History

1.0.0 (2019-12-01)

  • First release on PyPI.

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