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4 months ago

BlitzNet: A Real-Time Deep Network for Scene Understanding

Nikita Dvornik; Konstantin Shmelkov; Julien Mairal; Cordelia Schmid

BlitzNet: A Real-Time Deep Network for Scene Understanding

Abstract

Real-time scene understanding has become crucial in many applications such as autonomous driving. In this paper, we propose a deep architecture, called BlitzNet, that jointly performs object detection and semantic segmentation in one forward pass, allowing real-time computations. Besides the computational gain of having a single network to perform several tasks, we show that object detection and semantic segmentation benefit from each other in terms of accuracy. Experimental results for VOC and COCO datasets show state-of-the-art performance for object detection and segmentation among real time systems.

Code Repositories

dvornikita/blitznet
tf
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
object-detection-on-pascal-voc-2007BlitzNet512 + seg (s8)
MAP: 81.5%
real-time-object-detection-on-pascal-voc-2007BlitzNet512 (s4)
FPS: 24
MAP: 79.1%
real-time-object-detection-on-pascal-voc-2007BlitzNet512 (s8)
FPS: 19.5
MAP: 81.5%

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BlitzNet: A Real-Time Deep Network for Scene Understanding | Papers | HyperAI