Filtered Channel Features for Pedestrian Detection

01/23/2015
by   Shanshan Zhang, et al.
0

This paper starts from the observation that multiple top performing pedestrian detectors can be modelled by using an intermediate layer filtering low-level features in combination with a boosted decision forest. Based on this observation we propose a unifying framework and experimentally explore different filter families. We report extensive results enabling a systematic analysis. Using filtered channel features we obtain top performance on the challenging Caltech and KITTI datasets, while using only HOG+LUV as low-level features. When adding optical flow features we further improve detection quality and report the best known results on the Caltech dataset, reaching 93 FPPI.

READ FULL TEXT

page 4

page 8

page 11

page 12

research
11/16/2014

Ten Years of Pedestrian Detection, What Have We Learned?

Paper-by-paper results make it easy to miss the forest for the trees.We ...
research
04/19/2016

Deep Saliency with Encoded Low level Distance Map and High Level Features

Recent advances in saliency detection have utilized deep learning to obt...
research
11/12/2019

Random Projections of Mel-Spectrograms as Low-Level Features for Automatic Music Genre Classification

In this work, we analyse the random projections of Mel-spectrograms as l...
research
08/08/2020

Single-Shot Two-Pronged Detector with Rectified IoU Loss

In the CNN based object detectors, feature pyramids are widely exploited...
research
02/18/2023

An anatomy-based V1 model: Extraction of Low-level Features, Reduction of distortion and a V1-inspired SOM

We present a model of the primary visual cortex V1, guided by anatomical...
research
04/28/2015

Convolutional Channel Features

Deep learning methods are powerful tools but often suffer from expensive...
research
11/26/2020

Explainable AI for ML jet taggers using expert variables and layerwise relevance propagation

A framework is presented to extract and understand decision-making infor...

Please sign up or login with your details

Forgot password? Click here to reset