2nd Place Solution in Google AI Open Images Object Detection Track 2019

11/17/2019
by   Ruoyu Guo, et al.
0

We present an object detection framework based on PaddlePaddle. We put all the strategies together (multi-scale training, FPN, Cascade, Dcnv2, Non-local, libra loss) based on ResNet200-vd backbone. Our model score on public leaderboard comes to 0.6269 with single scale test. We proposed a new voting method called top-k voting-nms, based on the SoftNMS detection results. The voting method helps us merge all the models' results more easily and achieve 2nd place in the Google AI Open Images Object Detection Track 2019.

READ FULL TEXT
research
09/04/2018

PFDet: 2nd Place Solution to Open Images Challenge 2018 Object Detection Track

We present a large-scale object detection system by team PFDet. Our syst...
research
12/29/2015

A framework for robust object multi-detection with a vote aggregation and a cascade filtering

This paper presents a framework designed for the multi-object detection ...
research
03/26/2016

Learning Hough Regression Models via Bridge Partial Least Squares for Object Detection

Popular Hough Transform-based object detection approaches usually constr...
research
10/15/2018

Solution for Large-Scale Hierarchical Object Detection Datasets with Incomplete Annotation and Data Imbalance

This report demonstrates our solution for the Open Images 2018 Challenge...
research
03/17/2020

1st Place Solutions for OpenImage2019 – Object Detection and Instance Segmentation

This article introduces the solutions of the two champion teams, `MMfrui...
research
05/04/2021

Blocks as geographic discontinuities: The effect of polling place assignment on voting

A potential voter must incur a number of costs in order to successfully ...

Please sign up or login with your details

Forgot password? Click here to reset