FOVEA: Foveated Image Magnification for Autonomous Navigation

08/27/2021
by   Chittesh Thavamani, et al.
1

Efficient processing of high-resolution video streams is safety-critical for many robotics applications such as autonomous driving. Image downsampling is a commonly adopted technique to ensure the latency constraint is met. However, this naive approach greatly restricts an object detector's capability to identify small objects. In this paper, we propose an attentional approach that elastically magnifies certain regions while maintaining a small input canvas. The magnified regions are those that are believed to have a high probability of containing an object, whose signal can come from a dataset-wide prior or frame-level prior computed from recent object predictions. The magnification is implemented by a KDE-based mapping to transform the bounding boxes into warping parameters, which are then fed into an image sampler with anti-cropping regularization. The detector is then fed with the warped image and we apply a differentiable backward mapping to get bounding box outputs in the original space. Our regional magnification allows algorithms to make better use of high-resolution input without incurring the cost of high-resolution processing. On the autonomous driving datasets Argoverse-HD and BDD100K, we show our proposed method boosts the detection AP over standard Faster R-CNN, with and without finetuning. Additionally, building on top of the previous state-of-the-art in streaming detection, our method sets a new record for streaming AP on Argoverse-HD (from 17.8 to 23.0 on a GTX 1080 Ti GPU), suggesting that it has achieved a superior accuracy-latency tradeoff.

READ FULL TEXT

page 1

page 3

page 4

page 6

page 7

page 14

page 15

research
04/05/2022

SALISA: Saliency-based Input Sampling for Efficient Video Object Detection

High-resolution images are widely adopted for high-performance object de...
research
10/24/2019

Learning an Uncertainty-Aware Object Detector for Autonomous Driving

The capability to detect objects is a core part of autonomous driving. D...
research
06/26/2018

CFENet: An Accurate and Efficient Single-Shot Object Detector for Autonomous Driving

The ability to detect small objects and the speed of the object detector...
research
11/16/2020

FRDet: Balanced and Lightweight Object Detector based on Fire-Residual Modules for Embedded Processor of Autonomous Driving

For deployment on an embedded processor for autonomous driving, the obje...
research
12/10/2019

FootAndBall: Integrated player and ball detector

The paper describes a deep neural network-based detector dedicated for b...
research
08/31/2023

Edge-Assisted Lightweight Region-of-Interest Extraction and Transmission for Vehicle Perception

To enhance on-road environmental perception for autonomous driving, accu...
research
08/11/2022

Optimizing Anchor-based Detectors for Autonomous Driving Scenes

This paper summarizes model improvements and inference-time optimization...

Please sign up or login with your details

Forgot password? Click here to reset