High-efficiency floating-point neural network inference operators for mobile, server, and Web
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Updated
May 31, 2024 - C
High-efficiency floating-point neural network inference operators for mobile, server, and Web
An Embedded Computer Vision & Machine Learning Library (CPU Optimized & IoT Capable)
Identify the emotion of multiple speakers in an Audio Segment
[TPAMI 2018] Predicting the Driver’s Focus of Attention: the DR(eye)VE Project. A deep neural network learnt to reproduce the human driver focus of attention (FoA) in a variety of real-world driving scenarios.
Mobilenet v1 trained on Imagenet for STM32 using extended CMSIS-NN with INT-Q quantization support
Implementation of convolution layer in different flavors
YOLOv4 (v3/v2) - Windows and Linux version of Darknet Neural Networks for object detection (Tensor Cores are used)
A minimalist Deep Learning framework for embedded Computer Vision
Convolutional Interactive Artificial Neural Networks by/for Astrophysicists
A framework for the creation and training of vanilla and convolutional neural nets only depending on a C compiler and standard library
A series of machine learning trigger bots for Counter-Strike: Global Offensive (CS:GO).
A C implementation of common Artificial Neural Networks
Complete, simple and cool convolutional neural network framework, built from scratch, parallel able with OpenMP and almost dependency free. Supports custom architectures.
neural network for C programmers
SpMV-CNN: A set of convolutional neural nets for estimating the run time and energy consumption of the sparse matrix-vector product
Simple Convolutional Neural Network library
Rede convolucional em C. Camadas Conv, ConvNc, Pool, PoolAv, Relu, Softmax, BatchNorm, DropOut, FullConnect.
A machine learning trigger bot for Quake3 Arena & Quake Live.
An experiment to re-purpose MTCNN for other uses than facial detection
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