Deep learning for safe autonomous transport is rapidly emerging. Fast and robust perception for autonomous vehicles will be crucial for future navigation in urban areas with high traffic and human interplay. Previous work focuses on extracting full image depth maps, or finding specific road features such as lanes. However, in urban environments lanes are not always present, and sensors such as LiDAR with 3D point clouds provide a quite sparse depth perception of road with demanding algorithmic approaches. In this thesis we derive a novel convolutional neural network that we call AutoNet. It is designed as an encoder-decoder network for pixel-wise depth estimation of an urban drivable free-space road, using only a monocular camera, and handl...
This paper focuses on improving the accuracy of detecting on-road objects, includingcars, trucks, pe...
The thesis explores application of deep learning on detection and classification of road markings in...
U ovom radu opisane su postojeće metode procjene dubinske mape na temelju slike dobivene s jedne kam...
Deep learning for safe autonomous transport is rapidly emerging. Fast and robust perception for auto...
Depth estimation from 2D images is a fundamental problem in Computer Vision, and is increasingly bec...
Today automotive companies across the world strive to create vehicles with fully autonomous capabili...
Vision based active safety systems have become more frequently occurring in modern vehicles to estim...
With the development of artificial neural network (ANN), it has been introduced in more and more com...
Depth information is a vital component for perception of the 3D structure of vehicle's surroundings ...
Autonomous vehicles face various challenges under difficult terrain conditions such as marginally ru...
Observing the earth from above is a great way of understanding our world better. From space, many co...
Robust scene understanding is one of the main keys for safe autonomous vehicles and for competent ad...
Za autonomnu vožnju potrebno je da vozilo preko kamera i senzora može prepoznati okolinu oko sebe na...
This thesis work belongs to the field of self-supervised monocular depth estimation and constitutes ...
Autonomous vehicles have previously used road markings as a reference for drivable area detection. F...
This paper focuses on improving the accuracy of detecting on-road objects, includingcars, trucks, pe...
The thesis explores application of deep learning on detection and classification of road markings in...
U ovom radu opisane su postojeće metode procjene dubinske mape na temelju slike dobivene s jedne kam...
Deep learning for safe autonomous transport is rapidly emerging. Fast and robust perception for auto...
Depth estimation from 2D images is a fundamental problem in Computer Vision, and is increasingly bec...
Today automotive companies across the world strive to create vehicles with fully autonomous capabili...
Vision based active safety systems have become more frequently occurring in modern vehicles to estim...
With the development of artificial neural network (ANN), it has been introduced in more and more com...
Depth information is a vital component for perception of the 3D structure of vehicle's surroundings ...
Autonomous vehicles face various challenges under difficult terrain conditions such as marginally ru...
Observing the earth from above is a great way of understanding our world better. From space, many co...
Robust scene understanding is one of the main keys for safe autonomous vehicles and for competent ad...
Za autonomnu vožnju potrebno je da vozilo preko kamera i senzora može prepoznati okolinu oko sebe na...
This thesis work belongs to the field of self-supervised monocular depth estimation and constitutes ...
Autonomous vehicles have previously used road markings as a reference for drivable area detection. F...
This paper focuses on improving the accuracy of detecting on-road objects, includingcars, trucks, pe...
The thesis explores application of deep learning on detection and classification of road markings in...
U ovom radu opisane su postojeće metode procjene dubinske mape na temelju slike dobivene s jedne kam...