Reducing Network Agnostophobia

11/09/2018
by   Akshay Raj Dhamija, et al.
0

Agnostophobia, the fear of the unknown, can be experienced by deep learning engineers while applying their networks to real-world applications. Unfortunately, network behavior is not well defined for inputs far from a networks training set. In an uncontrolled environment, networks face many instances that are not of interest to them and have to be rejected in order to avoid a false positive. This problem has previously been tackled by researchers by either a) thresholding softmax, which by construction cannot return "none of the known classes", or b) using an additional background or garbage class. In this paper, we show that both of these approaches help, but are generally insufficient when previously unseen classes are encountered. We also introduce a new evaluation metric that focuses on comparing the performance of multiple approaches in scenarios where such unseen classes or unknowns are encountered. Our major contributions are simple yet effective Entropic Open-Set and Objectosphere losses that train networks using negative samples from some classes. These novel losses are designed to maximize entropy for unknown inputs while increasing separation in deep feature space by modifying magnitudes of known and unknown samples. Experiments on networks trained to classify classes from MNIST and CIFAR-10 show that our novel loss functions are significantly better at dealing with unknown inputs from datasets such as Devanagari, NotMNIST, CIFAR-100, and SVHN.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/13/2022

Large-Scale Open-Set Classification Protocols for ImageNet

Open-Set Classification (OSC) intends to adapt closed-set classification...
research
11/02/2015

Galaxy-X: A Novel Approach for Multi-class Classification in an Open Universe

Classification is a fundamental task in machine learning and artificial ...
research
09/10/2020

Improved Robustness to Open Set Inputs via Tempered Mixup

Supervised classification methods often assume that evaluation data is d...
research
06/26/2020

MMF: A loss extension for feature learning in open set recognition

Open set recognition (OSR) is the problem of classifying the known class...
research
11/11/2021

Raman spectroscopy in open world learning settings using the Objectosphere approach

Raman spectroscopy in combination with machine learning has significant ...
research
11/13/2018

Co-Representation Learning For Classification and Novel Class Detection via Deep Networks

Deep Neural Network (DNN) has been largely demonstrated to be effective ...
research
04/06/2020

Class Anchor Clustering: a Distance-based Loss for Training Open Set Classifiers

Existing open set classifiers distinguish between known and unknown inpu...

Please sign up or login with your details

Forgot password? Click here to reset