Underwater object detection using Invert Multi-Class Adaboost with deep
learning
- URL: http://arxiv.org/abs/2005.11552v1
- Date: Sat, 23 May 2020 15:30:38 GMT
- Title: Underwater object detection using Invert Multi-Class Adaboost with deep
learning
- Authors: Long Chen, Zhihua Liu, Lei Tong, Zheheng Jiang, Shengke Wang, Junyu
Dong, Huiyu Zhou
- Abstract summary: We propose a novel neural network architecture, namely Sample-WeIghted hyPEr Network (SWIPENet), for small object detection.
We show that the proposed SWIPENet+IMA framework achieves better performance in detection accuracy against several state-of-the-art object detection approaches.
- Score: 37.14538666012363
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In recent years, deep learning based methods have achieved promising
performance in standard object detection. However, these methods lack
sufficient capabilities to handle underwater object detection due to these
challenges: (1) Objects in real applications are usually small and their images
are blurry, and (2) images in the underwater datasets and real applications
accompany heterogeneous noise. To address these two problems, we first propose
a novel neural network architecture, namely Sample-WeIghted hyPEr Network
(SWIPENet), for small object detection. SWIPENet consists of high resolution
and semantic rich Hyper Feature Maps which can significantly improve small
object detection accuracy. In addition, we propose a novel sample-weighted loss
function which can model sample weights for SWIPENet, which uses a novel sample
re-weighting algorithm, namely Invert Multi-Class Adaboost (IMA), to reduce the
influence of noise on the proposed SWIPENet. Experiments on two underwater
robot picking contest datasets URPC2017 and URPC2018 show that the proposed
SWIPENet+IMA framework achieves better performance in detection accuracy
against several state-of-the-art object detection approaches.
Related papers
- Small Object Detection via Coarse-to-fine Proposal Generation and
Imitation Learning [52.06176253457522]
We propose a two-stage framework tailored for small object detection based on the Coarse-to-fine pipeline and Feature Imitation learning.
CFINet achieves state-of-the-art performance on the large-scale small object detection benchmarks, SODA-D and SODA-A.
arXiv Detail & Related papers (2023-08-18T13:13:09Z) - Knowledge Distillation for Oriented Object Detection on Aerial Images [1.827510863075184]
We present a model compression method for rotated object detection on aerial images by knowledge distillation, namely KD-RNet.
The experimental result on a large-scale aerial object detection dataset (DOTA) demonstrates that the proposed KD-RNet model can achieve improved mean-average precision (mAP) with reduced number of parameters, at the same time, KD-RNet boost the performance on providing high quality detections with higher overlap with groundtruth annotations.
arXiv Detail & Related papers (2022-06-20T14:24:16Z) - Enhanced Single-shot Detector for Small Object Detection in Remote
Sensing Images [33.84369068593722]
We propose image pyramid single-shot detector (IPSSD) for small-scale object detection.
In IPSSD, single-shot detector is adopted combined with an image pyramid network to extract semantically strong features for generating candidate regions.
The proposed network can enhance the small-scale features from a feature pyramid network.
arXiv Detail & Related papers (2022-05-12T07:35:07Z) - SALISA: Saliency-based Input Sampling for Efficient Video Object
Detection [58.22508131162269]
We propose SALISA, a novel non-uniform SALiency-based Input SAmpling technique for video object detection.
We show that SALISA significantly improves the detection of small objects.
arXiv Detail & Related papers (2022-04-05T17:59:51Z) - You Better Look Twice: a new perspective for designing accurate
detectors with reduced computations [56.34005280792013]
BLT-net is a new low-computation two-stage object detection architecture.
It reduces computations by separating objects from background using a very lite first-stage.
Resulting image proposals are then processed in the second-stage by a highly accurate model.
arXiv Detail & Related papers (2021-07-21T12:39:51Z) - QueryDet: Cascaded Sparse Query for Accelerating High-Resolution Small
Object Detection [17.775203579232144]
We propose a novel query mechanism to accelerate the inference speed of feature-pyramid based object detectors.
The pipeline first predicts the coarse locations of small objects on low-resolution features and then computes the accurate detection results using high-resolution features.
On the popular COCO dataset, the proposed method improves the detection mAP by 1.0 and mAP-small by 2.0, and the high-resolution inference speed is improved to 3.0x on average.
arXiv Detail & Related papers (2021-03-16T15:30:20Z) - SWIPENET: Object detection in noisy underwater images [41.35601054297707]
We propose a novel Sample-WeIghted hyPEr Network (SWIPENET), and a robust training paradigm named Curriculum Multi-Class Adaboost (CMA) to address these two problems.
The backbone of SWIPENET produces multiple high resolution and semantic-rich Hyper Feature Maps, which significantly improve small object detection.
Inspired by the human education process that drives the learning from easy to hard concepts, we here propose the CMA training paradigm that first trains a clean detector which is free from the influence of noisy data.
arXiv Detail & Related papers (2020-10-19T16:41:20Z) - One-Shot Object Detection without Fine-Tuning [62.39210447209698]
We introduce a two-stage model consisting of a first stage Matching-FCOS network and a second stage Structure-Aware Relation Module.
We also propose novel training strategies that effectively improve detection performance.
Our method exceeds the state-of-the-art one-shot performance consistently on multiple datasets.
arXiv Detail & Related papers (2020-05-08T01:59:23Z) - Depthwise Non-local Module for Fast Salient Object Detection Using a
Single Thread [136.2224792151324]
We propose a new deep learning algorithm for fast salient object detection.
The proposed algorithm achieves competitive accuracy and high inference efficiency simultaneously with a single CPU thread.
arXiv Detail & Related papers (2020-01-22T15:23:48Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.