Metric Learning with Background Noise Class for Few-shot Detection of Rare Sound Events

10/30/2019
by   Kazuki Shimada, et al.
0

Few-shot learning systems for sound event recognition gain interests since they require only a few examples to adapt to new target classes without fine-tuning. However, such systems have only been applied to chunks of sounds for classification or verification. In this paper, we aim to achieve few-shot detection of rare sound events, from long query sequence that contain not only the target events but also the other events and background noise. Therefore, it is required to prevent false positive reactions to both the other events and background noise. We propose metric learning with background noise class for the few-shot detection. The contribution is to present the explicit inclusion of background noise as a independent class, a suitable loss function that emphasizes this additional class, and a corresponding sampling strategy that assists training. It provides a feature space where the event classes and the background noise class are sufficiently separated. Evaluations on few-shot detection tasks, using DCASE 2017 task2 and ESC-50, show that our proposed method outperforms metric learning without considering the background noise class. The few-shot detection performance is also comparable to that of the DCASE 2017 task2 baseline system, which requires huge amount of annotated audio data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/15/2022

Segment-level Metric Learning for Few-shot Bioacoustic Event Detection

Few-shot bioacoustic event detection is a task that detects the occurren...
research
12/04/2018

Rare Event Detection using Disentangled Representation Learning

This paper presents a novel method for rare event detection from an imag...
research
03/31/2017

Bi-class classification of humpback whale sound units against complex background noise with Deep Convolution Neural Network

Automatically detecting sound units of humpback whales in complex time-v...
research
07/21/2022

Surrey System for DCASE 2022 Task 5: Few-shot Bioacoustic Event Detection with Segment-level Metric Learning

Few-shot audio event detection is a task that detects the occurrence tim...
research
12/04/2018

Learning to match transient sound events using attentional similarity for few-shot sound recognition

In this paper, we introduce a novel attentional similarity module for th...
research
07/23/2021

Automatic Detection Of Noise Events at Shooting Range Using Machine Learning

Outdoor shooting ranges are subject to noise regulations from local and ...
research
05/24/2022

Adaptive Few-Shot Learning Algorithm for Rare Sound Event Detection

Sound event detection is to infer the event by understanding the surroun...

Please sign up or login with your details

Forgot password? Click here to reset