End-to-end people detection in crowded scenes

06/16/2015
by   Russell Stewart, et al.
0

Current people detectors operate either by scanning an image in a sliding window fashion or by classifying a discrete set of proposals. We propose a model that is based on decoding an image into a set of people detections. Our system takes an image as input and directly outputs a set of distinct detection hypotheses. Because we generate predictions jointly, common post-processing steps such as non-maximum suppression are unnecessary. We use a recurrent LSTM layer for sequence generation and train our model end-to-end with a new loss function that operates on sets of detections. We demonstrate the effectiveness of our approach on the challenging task of detecting people in crowded scenes.

READ FULL TEXT
research
11/19/2014

End-to-End Integration of a Convolutional Network, Deformable Parts Model and Non-Maximum Suppression

Deformable Parts Models and Convolutional Networks each have achieved no...
research
06/14/2023

FROG: A new people detection dataset for knee-high 2D range finders

Mobile robots require knowledge of the environment, especially of humans...
research
01/12/2019

Learning Pairwise Relationship for Multi-object Detection in Crowded Scenes

As the post-processing step for object detection, non-maximum suppressio...
research
05/23/2020

RAPiD: Rotation-Aware People Detection in Overhead Fisheye Images

Recent methods for people detection in overhead, fisheye images either u...
research
05/05/2022

Text to artistic image generation

Painting is one of the ways for people to express their ideas, but what ...
research
09/12/2016

Detecting Text in Natural Image with Connectionist Text Proposal Network

We propose a novel Connectionist Text Proposal Network (CTPN) that accur...
research
04/06/2020

Appearance Shock Grammar for Fast Medial Axis Extraction from Real Images

We combine ideas from shock graph theory with more recent appearance-bas...

Please sign up or login with your details

Forgot password? Click here to reset