RackLay: Multi-Layer Layout Estimation for Warehouse Racks

03/16/2021
by   Meher Shashwat Nigam, et al.
28

Given a monocular colour image of a warehouse rack, we aim to predict the bird's-eye view layout for each shelf in the rack, which we term as multi-layer layout prediction. To this end, we present RackLay, a deep neural network for real-time shelf layout estimation from a single image. Unlike previous layout estimation methods, which provide a single layout for the dominant ground plane alone, RackLay estimates the top-view and front-view layout for each shelf in the considered rack populated with objects. RackLay's architecture and its variants are versatile and estimate accurate layouts for diverse scenes characterized by varying number of visible shelves in an image, large range in shelf occupancy factor and varied background clutter. Given the extreme paucity of datasets in this space and the difficulty involved in acquiring real data from warehouses, we additionally release a flexible synthetic dataset generation pipeline WareSynth which allows users to control the generation process and tailor the dataset according to contingent application. The ablations across architectural variants and comparison with strong prior baselines vindicate the efficacy of RackLay as an apt architecture for the novel problem of multi-layered layout estimation. We also show that fusing the top-view and front-view enables 3D reasoning applications such as metric free space estimation for the considered rack.

READ FULL TEXT

page 1

page 6

page 7

page 8

research
11/30/2022

MVRackLay: Monocular Multi-View Layout Estimation for Warehouse Racks and Shelves

In this paper, we propose and showcase, for the first time, monocular mu...
research
02/19/2020

MonoLayout: Amodal scene layout from a single image

In this paper, we address the novel, highly challenging problem of estim...
research
12/12/2021

MVLayoutNet:3D layout reconstruction with multi-view panoramas

We present MVLayoutNet, an end-to-end network for holistic 3D reconstruc...
research
08/20/2021

AutoLay: Benchmarking amodal layout estimation for autonomous driving

Given an image or a video captured from a monocular camera, amodal layou...
research
01/16/2023

Diverse Multimedia Layout Generation with Multi Choice Learning

Designing visually appealing layouts for multimedia documents containing...
research
03/30/2020

LayoutMP3D: Layout Annotation of Matterport3D

Inferring the information of 3D layout from a single equirectangular pan...
research
10/28/2022

Hierarchical Automatic Power Plane Generation with Genetic Optimization and Multilayer Perceptron

We present an automatic multilayer power plane generation method to acce...

Please sign up or login with your details

Forgot password? Click here to reset