fmo-cpp-demo
deepdetect
fmo-cpp-demo | deepdetect | |
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1 | 4 | |
52 | 2,497 | |
- | 0.3% | |
2.6 | 6.7 | |
over 3 years ago | 1 day ago | |
C++ | C++ | |
MIT License | GNU General Public License v3.0 or later |
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fmo-cpp-demo
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[Question] Best strategy for real time, fast ball tracking?
Can you check this repo, It 's about fast moving object detection https://github.com/rozumden/fmo-cpp-demo
deepdetect
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Exploring Open-Source Alternatives to Landing AI for Robust MLOps
For those seeking a lightweight solution for setting up deep learning REST APIs across platforms without the complexity of Kubernetes, Deepdetect is worth considering.
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[D] Deep Learning Framework for C++.
But you need to have good reasons to do it. Ours is that we have a multi-backend framework, and that we don't want any step in between dev & run. C++ allows for this since the same code can run on training server and edge device as needed. It also allows for building full AI applicatioms with great performances (e g. real time) We dev & use https://github.com/jolibrain/deepdetect for these purposes and it serves us very well, but it's not the faint of heart !
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[P] Real-time AR for jewelry virtual try on that looks real, done with joliGAN, based on a few 2D videos and no 3D model
- Real-time is achieved through our full C++ Open Source backend DeepDetect, https://github.com/jolibrain/deepdetect. We use CUDA along with OpenCV and TensorRT to chain multiple models (ring detection and generator mostly), and we make sure the data remain within CUDA memory at all time. This allows us to reach ~60 FPS on 1080Ti and 20% more on average on an RTX3090.
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[P] Benchmarking OpenBLAS on an Apple MacBook M1
Interesting, thanks. Recently benchmarked inference with Vulkan/MoltenVK/NCNN, M1 GPU is roughly 30% faster than M1 CPU, https://github.com/jolibrain/deepdetect/pull/1105 for single batch inference (NCNN does not really support batch size > 1).
What are some alternatives?
yolov5 - YOLOv5 🚀 in PyTorch > ONNX > CoreML > TFLite
ncnn - ncnn is a high-performance neural network inference framework optimized for the mobile platform
PreciseRoIPooling - Precise RoI Pooling with coordinate gradient support, proposed in the paper "Acquisition of Localization Confidence for Accurate Object Detection" (https://arxiv.org/abs/1807.11590).
netron - Visualizer for neural network, deep learning and machine learning models
YOLOv4-Tiny-in-UnityCG-HLSL - A modern object detector inside fragment shaders
tensorflow-wheels - Tensorflow Wheels
YoloV7-ncnn-Jetson-Nano - YoloV7 for a Jetson Nano using ncnn.
mdspan - Reference implementation of mdspan targeting C++23
mmaction2 - OpenMMLab's Next Generation Video Understanding Toolbox and Benchmark
marian - Fast Neural Machine Translation in C++
ArrayFire - ArrayFire: a general purpose GPU library.
flashlight - A C++ standalone library for machine learning