NVIDIA® Jetson™ Developer Challenge
96 submitted projects
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Real time Shark Detection system
Applying state of the art deep learning and computer vision methods to create a real time Shark detection system all run on the Jetson TX2.
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AiSight - A Smart Eye
Next Vision for Blindness Using Deep Learning
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Prism
Prism is a horizontally scalable, real-time software/hardware edge compute solution designed for high-performance industrial applications.
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BIN-e Smart Waste Bin
BIN-e smart waste bin that automatically recognizes and sort waste
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SPECTRALIX
We're creating the fertilizer, irrigation, pesticide prescription map for your plants, in realtime with Nvidia Jetson, with AI.
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Proteus Cage
The project will develop a multi-camera companion box offered to community and will seek to leverage Jetson AI ability to find lost items
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Panther
#Panther is an outdoor #GoROS robot, with @NVIDIAEmbedded #JetsonTX2, #ZED and LIDAR, this robot explore and learn the world autonomously.
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To overcome the unemployment if our country
Get online local workers and services in your pin code area with more classifieds way any user can register with servicesender.in
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Parking Guidance System
In this project we are creating a proof of concept for an intelligent car parking system model which uses sensors only at the entrance.
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T0R0 rover
T0R0 is a rover made for the ERC competition that will take place in poland in September 2018.
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Kiwibot
The Kiwibot is an autonomous robots that navigates the sidewalks delivering food from restaurants to costumers.
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Cognitive scanner for quality inspection
Gimic is a cognitive scanner for quality inspection
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SHEnetics Conversational AI Voice Assistant
SHEnetics (SHE.ai) is the industry's first Automotive and Avionics Grade AI Voice Assistant
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Paintbot
Paintbot is an autonomous painting robot that can move freely inside construction zones or outside to paint construction objects.
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Open Rover
Outdoor robotics platform
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ID3dM
An intelligence device used to find Microstructure under Microscope and analyze them by using CNN and Computer Vision