Classification of Bulk Cargo Types Stored Openly at Ports Using CNN
Abstract
In this paper, we present a novel concept of tracking
cargoes at open ports using remote sensing images and
convolution neural network (CNN) to classify various
dry bulk commodities. The dataset used is prepared
using Sentinel-2 atmospherically corrected (Sentinel-2
L2A) images covering 12 spectral bands. There are total
4995 labeled and geo-referenced images for four different
cargoes-bauxite, coal, limestone and logs. We provide
benchmarks for this dataset using a CNN. The overall
classification accuracy achieved was more than 90% for
all cargo types. The dataset finds its applications in
detecting and identifying cargoes on open ports
Publisher
IEEECitation
Koirala M, Ellingsen PG, Ådland RO. Classification of Bulk Cargo Types Stored Openly at Ports Using CNN. IEEE conference proceedings; 2023. 4 p.Metadata
Show full item recordCollections
Copyright 2023 The Author(s)