Inverting and Visualizing Features for Object Detection

12/11/2012
by   Carl Vondrick, et al.
0

We introduce algorithms to visualize feature spaces used by object detectors. The tools in this paper allow a human to put on `HOG goggles' and perceive the visual world as a HOG based object detector sees it. We found that these visualizations allow us to analyze object detection systems in new ways and gain new insight into the detector's failures. For example, when we visualize the features for high scoring false alarms, we discovered that, although they are clearly wrong in image space, they do look deceptively similar to true positives in feature space. This result suggests that many of these false alarms are caused by our choice of feature space, and indicates that creating a better learning algorithm or building bigger datasets is unlikely to correct these errors. By visualizing feature spaces, we can gain a more intuitive understanding of our detection systems.

READ FULL TEXT

page 1

page 2

page 4

page 5

page 6

page 8

page 9

research
02/19/2015

Visualizing Object Detection Features

We introduce algorithms to visualize feature spaces used by object detec...
research
08/16/2020

False Detection (Positives and Negatives) in Object Detection

Object detection is a very important function of visual perception syste...
research
03/09/2020

BiDet: An Efficient Binarized Object Detector

In this paper, we propose a binarized neural network learning method cal...
research
12/27/2019

Combining Deep Learning and Verification for Precise Object Instance Detection

Deep learning object detectors often return false positives with very hi...
research
12/13/2022

Object-fabrication Targeted Attack for Object Detection

Recent researches show that the deep learning based object detection is ...
research
10/26/2021

Understanding the Role of Self-Supervised Learning in Out-of-Distribution Detection Task

Self-supervised learning (SSL) has achieved great success in a variety o...
research
07/24/2009

Learning Object Location Predictors with Boosting and Grammar-Guided Feature Extraction

We present BEAMER: a new spatially exploitative approach to learning obj...

Please sign up or login with your details

Forgot password? Click here to reset