BigSnarf blog

Infosec FTW

FCN – Fully Convolutional Network


Advanced Multi + Embedded CNN


Path planning using Segmentation

We present a weakly-supervised approach to segmenting proposed drivable paths in images with the goal of autonomous driving in complex urban environments. Using recorded routes from a data collection vehicle, our proposed method generates vast quantities of labelled images containing proposed paths and obstacles without requiring manual annotation, which we then use to train a deep semantic segmentation network. With the trained network we can segment proposed paths and obstacles at run-time using a vehicle equipped with only a monocular camera without relying on explicit modelling of road or lane markings. We evaluate our method on the largescale KITTI and Oxford RobotCar datasets and demonstrate reliable path proposal and obstacle segmentation in a wide variety of environments under a range of lighting, weather and traffic conditions. We illustrate how the method can generalise to multiple path proposals at intersections and outline plans to incorporate the system into a framework for autonomous urban driving.

3D & LIDAR datasets

LIDAR Point Clouds and Deep Learning


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Processing Point Clouds



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360 video of Google Self Driving Car

Robotic Adversary

Real time collision detection

Deep Learning Satellite Images

Ego Motion from Video

Securing FPGA