Object detection via a multi-region & semantic segmentation-aware CNN model

05/07/2015
by   Spyros Gidaris, et al.
0

We propose an object detection system that relies on a multi-region deep convolutional neural network (CNN) that also encodes semantic segmentation-aware features. The resulting CNN-based representation aims at capturing a diverse set of discriminative appearance factors and exhibits localization sensitivity that is essential for accurate object localization. We exploit the above properties of our recognition module by integrating it on an iterative localization mechanism that alternates between scoring a box proposal and refining its location with a deep CNN regression model. Thanks to the efficient use of our modules, we detect objects with very high localization accuracy. On the detection challenges of PASCAL VOC2007 and PASCAL VOC2012 we achieve mAP of 78.2 work by a significant margin.

READ FULL TEXT

page 4

page 6

page 7

page 10

page 14

page 15

page 16

page 17

research
10/19/2016

StuffNet: Using 'Stuff' to Improve Object Detection

We propose a Convolutional Neural Network (CNN) based algorithm - StuffN...
research
11/24/2015

LocNet: Improving Localization Accuracy for Object Detection

We propose a novel object localization methodology with the purpose of b...
research
04/13/2015

Improving Object Detection with Deep Convolutional Networks via Bayesian Optimization and Structured Prediction

Object detection systems based on the deep convolutional neural network ...
research
03/18/2019

IvaNet: Learning to jointly detect and segment objets with the help of Local Top-Down Modules

Driven by Convolutional Neural Networks, object detection and semantic s...
research
03/01/2017

Improving Object Detection with Region Similarity Learning

Object detection aims to identify instances of semantic objects of a cer...
research
07/15/2020

Decoding CNN based Object Classifier Using Visualization

This paper investigates how working of Convolutional Neural Network (CNN...

Please sign up or login with your details

Forgot password? Click here to reset