Tiny-YOLO object detection supplemented with geometrical data

08/05/2020
by   Ivan Khokhlov, et al.
0

We propose a method of improving detection precision (mAP) with the help of the prior knowledge about the scene geometry: we assume the scene to be a plane with objects placed on it. We focus our attention on autonomous robots, so given the robot's dimensions and the inclination angles of the camera, it is possible to predict the spatial scale for each pixel of the input frame. With slightly modified YOLOv3-tiny we demonstrate that the detection supplemented by the scale channel, further referred as S, outperforms standard RGB-based detection with small computational overhead.

READ FULL TEXT

page 4

page 5

research
03/25/2023

Learned Two-Plane Perspective Prior based Image Resampling for Efficient Object Detection

Real-time efficient perception is critical for autonomous navigation and...
research
04/12/2022

HyperDet3D: Learning a Scene-conditioned 3D Object Detector

A bathtub in a library, a sink in an office, a bed in a laundry room – t...
research
08/23/2021

ODAM: Object Detection, Association, and Mapping using Posed RGB Video

Localizing objects and estimating their extent in 3D is an important ste...
research
12/21/2018

Casualty Detection from 3D Point Cloud Data for Autonomous Ground Mobile Rescue Robots

One of the most important features of mobile rescue robots is the abilit...
research
09/03/2019

Counterfactual Depth from a Single RGB Image

We describe a method that predicts, from a single RGB image, a depth map...
research
01/12/2021

Binary TTC: A Temporal Geofence for Autonomous Navigation

Time-to-contact (TTC), the time for an object to collide with the observ...
research
05/07/2023

YOLOCS: Object Detection based on Dense Channel Compression for Feature Spatial Solidification

In this study, we examine the associations between channel features and ...

Please sign up or login with your details

Forgot password? Click here to reset