Sample projects for TensorFlow Lite in C++ with delegates such as GPU, EdgeTPU, XNNPACK, NNAPI
-
Updated
Jul 18, 2022 - C++
Sample projects for TensorFlow Lite in C++ with delegates such as GPU, EdgeTPU, XNNPACK, NNAPI
GPU Accelerated TensorFlow Lite applications on Android NDK. Higher accuracy face detection, Age and gender estimation, Human pose estimation, Artistic style transfer
NNtrainer is Software Framework for Training Neural Network Models on Devices.
Neural network inference template for real-time cricital audio environments - presented at ADC23
an architecture for neural network inference in real-time audio applications
Number recognition with MNIST on Raspberry Pi Pico + TensorFlow Lite for Microcontrollers
O'Reilly <TinyML: 텐서플로우 라이트 Tensorflow Lite> 소스코드 저장소
Deezer Spleeter Library (C++)
OpenEmbedded meta layer to install AI frameworks and tools for the STM32MPU series
Magic Wand using Arduino Nano 33 BLE Sense, powered by TensorFlow Lite for Microcontrollers and PlatformIO
photils-cli is an application that passes an image through a neural network, classifies it, and extracts the suggested tags. Everything happens offline without the need that your data are sent over the internet.
TensorFlow Lite SSD on bare Raspberry Pi 4 with 64-bit OS at 24 FPS
TensorFlow Lite Erlang bindings with optional EdgeTPU support.
Real-time CPU person segmentation for privacy in video calls
Mediapipe face detector tflite model running, without using mediapipe framework, c++ implementation.
track human poses in realtime on iOS with tensorflow-lite and opencv
Magic Wand using ESPectro32 or other ESP32 boards, powered by TensorFlow Lite for Microcontrollers and PlatformIO
TensorFlow Lite object detection example for Raspberry Pi Zero
Deep learning model running on ESP32. Custom model used with TensorFlow Lite Micro to classify captured images of flying vehicles.
Machine Learning on personal image w/ ESP32Cam
Add a description, image, and links to the tensorflow-lite topic page so that developers can more easily learn about it.
To associate your repository with the tensorflow-lite topic, visit your repo's landing page and select "manage topics."