SlideShare a Scribd company logo
1 of 19
Download to read offline
Detection of Temporary Objects in Mobile
Lidar Point Clouds
Xinwei Fang
Guorui Li
Kourosh Khoshelham
Sander Oude Elberink
BACKGROUND
 Mobile laser scanning provides an accurate recording of road
environments useful for many applications;
 Usually only permanent objects are of interest;
 Temporary objects can hamper the analysis of permanent ones;
 Example: change detection using multi-epoch data where
temporary objects appear as (false) change signals.
2
APPROACH
Static
 Temporary objects:
Moving
 Static temporary objects:
 segmentation + classification based on shape features
 Moving temporary objects:
 segmentation + closest point analysis in two sensor data
3
STATIC TEMPORARY OBJECTS
 Classification based on shape features:
Linear
& short
Linear
& tall
Volumetric
& tall
Planar Volumetric
& short
4
MOVING TEMPORARY OBJECTS
 Detection based on closest point analysis with two
sensor data
Sensor 1
Sensor 2
5
METHODS
1. Ground removal
2. Connected-component segmentation
3. Static temporary objects:
 feature extraction + classification
4. Moving temporary objects:
 closest point analysis + classification
6
GROUND REMOVAL
 Plane-based segmentation
 Ground = large & low segment
7
CONNECTED COMPONENT SEGMENTATION
 Points that are closer than a certain distance (e.g. 30 cm) belong
to one connected component;
8
FEATURE EXTRACTION
 Shape features
Size (number of points)
Area on horizontal plane
Mean density
Height of the lowest point
Height
 Contextual feature
Distance to trajectory
 Eigen-based features
Anisotropy
Planarity
Sphericity
Linearity
9
CLASSIFICATION
 Ground truth for training and evaluation: manual labeling (115 samples)
 Feature selection
 Forward Selection (FS)
 Backward Elimination (BE)
 Classification
 Linear Discrimnant Classifier (LDC)
 Support Vector Machine (SVM)
10
CLOSEST POINT ANALYSIS
Static Moving
Static
objects
Moving
objects
Number 45 24
11
EXPERIMENTS
 Study area
Enschede, urban
 Data
TopScan MLS
One strip: ~20 mio points
12
RESULTS
Classifier Completeness Correctness
LDC - all features 0.90 0.86
LDC - FS (8 features) 0.90 0.79
LDC - BE (8 features) 0.95 0.91
SVM - all features 1.00 0.91
SVM - FS (9 features) 1.00 1.00
SVM - BE (11 features) 1.00 0.95
 Detection results for static temporary objects (test set):
13
RESULTS
 Classification results for the whole strip :
14
RESULTS
Sensor 1 Sensor 2 Sensor1 + Sensor2
Completeness 0.93 0.86 0.90
Correctness 0.90 0.96 0.93
Overall Accuracy 0.84 0.83 0.84
 Detection results for moving objects:
 Total 64 samples
 4 false positives
 6 false negatives
15
LIMITATIONS
 Occlusion;
 Overgrown and undergrown segments;
 Shrunk or elongated shapes due to
movement.
 Variable shape and size of vehicles.
16
SUMMARY
 Object-based approach: obvious choice as we are dealing with
objects not points;
 Connected component segmentation of objects works well (but
not perfect!);
 Shape features are suitable for classification of static temporary
objects; Accuracy > 90%.
 Distance between closest points is a useful measure for detecting
moving objects; Accuracy > 80%
 Occlusion: objects seen by one sensor but not the other =
problem for moving objects.
17
THANK YOU!
18
19

More Related Content

Similar to Detection of temporary objects in mobile lidar point clouds

2D/Multi-view Segmentation and Tracking
2D/Multi-view Segmentation and Tracking2D/Multi-view Segmentation and Tracking
2D/Multi-view Segmentation and TrackingTouradj Ebrahimi
 
Scrdet++ analysis
Scrdet++ analysisScrdet++ analysis
Scrdet++ analysisNEHA Kapoor
 
Terminal descent sensor selection.pdf
Terminal descent sensor selection.pdfTerminal descent sensor selection.pdf
Terminal descent sensor selection.pdfChandrabhraman
 
Presentation for the 19th EUROSTAR Users Conference June 2011
Presentation for the 19th EUROSTAR Users Conference June 2011Presentation for the 19th EUROSTAR Users Conference June 2011
Presentation for the 19th EUROSTAR Users Conference June 2011Antonios Arkas
 
Remote Sensing Data Acquisition,Scanning/Imaging systems
Remote Sensing Data Acquisition,Scanning/Imaging systemsRemote Sensing Data Acquisition,Scanning/Imaging systems
Remote Sensing Data Acquisition,Scanning/Imaging systemsdaniyal rustam
 
Laser-beams, spacecraft and archaeology; recent approaches to the recording, ...
Laser-beams, spacecraft and archaeology; recent approaches to the recording, ...Laser-beams, spacecraft and archaeology; recent approaches to the recording, ...
Laser-beams, spacecraft and archaeology; recent approaches to the recording, ...Paul Cripps
 
Digital Image Correlation Presentation
Digital Image Correlation PresentationDigital Image Correlation Presentation
Digital Image Correlation Presentationtrilionqualitysystems
 
AVORA I successful participation in SAUC-E'12
AVORA I successful participation in SAUC-E'12AVORA I successful participation in SAUC-E'12
AVORA I successful participation in SAUC-E'12avora_auv
 
Automatic and interactive spot check of the IDC bulletins (REB, SEL3) and XSE...
Automatic and interactive spot check of the IDC bulletins (REB, SEL3) and XSE...Automatic and interactive spot check of the IDC bulletins (REB, SEL3) and XSE...
Automatic and interactive spot check of the IDC bulletins (REB, SEL3) and XSE...ivanokitov
 
IRJET- Clustering the Real Time Moving Object Adjacent Tracking
IRJET-  	  Clustering the Real Time Moving Object Adjacent TrackingIRJET-  	  Clustering the Real Time Moving Object Adjacent Tracking
IRJET- Clustering the Real Time Moving Object Adjacent TrackingIRJET Journal
 
Laser guidance system for mobile robots
Laser guidance system for mobile robotsLaser guidance system for mobile robots
Laser guidance system for mobile robotstatsuyaarai
 
ramya_Motion_Detection
ramya_Motion_Detectionramya_Motion_Detection
ramya_Motion_Detectionramya1591
 
Fast and High-Precision 3D Tracking and Position Measurement with MEMS Microm...
Fast and High-Precision 3D Tracking and Position Measurement with MEMS Microm...Fast and High-Precision 3D Tracking and Position Measurement with MEMS Microm...
Fast and High-Precision 3D Tracking and Position Measurement with MEMS Microm...Ping Hsu
 
A Fast Laser Motion Detection and Approaching Behavior Monitoring Method for ...
A Fast Laser Motion Detection and Approaching Behavior Monitoring Method for ...A Fast Laser Motion Detection and Approaching Behavior Monitoring Method for ...
A Fast Laser Motion Detection and Approaching Behavior Monitoring Method for ...toukaigi
 

Similar to Detection of temporary objects in mobile lidar point clouds (20)

2D/Multi-view Segmentation and Tracking
2D/Multi-view Segmentation and Tracking2D/Multi-view Segmentation and Tracking
2D/Multi-view Segmentation and Tracking
 
Scrdet++ analysis
Scrdet++ analysisScrdet++ analysis
Scrdet++ analysis
 
Terminal descent sensor selection.pdf
Terminal descent sensor selection.pdfTerminal descent sensor selection.pdf
Terminal descent sensor selection.pdf
 
Introduction to TLS Workflow Presentation
Introduction to TLS Workflow PresentationIntroduction to TLS Workflow Presentation
Introduction to TLS Workflow Presentation
 
Presentation for the 19th EUROSTAR Users Conference June 2011
Presentation for the 19th EUROSTAR Users Conference June 2011Presentation for the 19th EUROSTAR Users Conference June 2011
Presentation for the 19th EUROSTAR Users Conference June 2011
 
Remote Sensing Data Acquisition,Scanning/Imaging systems
Remote Sensing Data Acquisition,Scanning/Imaging systemsRemote Sensing Data Acquisition,Scanning/Imaging systems
Remote Sensing Data Acquisition,Scanning/Imaging systems
 
Laser-beams, spacecraft and archaeology; recent approaches to the recording, ...
Laser-beams, spacecraft and archaeology; recent approaches to the recording, ...Laser-beams, spacecraft and archaeology; recent approaches to the recording, ...
Laser-beams, spacecraft and archaeology; recent approaches to the recording, ...
 
Digital Image Correlation Presentation
Digital Image Correlation PresentationDigital Image Correlation Presentation
Digital Image Correlation Presentation
 
Object tracking
Object trackingObject tracking
Object tracking
 
AVORA I successful participation in SAUC-E'12
AVORA I successful participation in SAUC-E'12AVORA I successful participation in SAUC-E'12
AVORA I successful participation in SAUC-E'12
 
Automatic and interactive spot check of the IDC bulletins (REB, SEL3) and XSE...
Automatic and interactive spot check of the IDC bulletins (REB, SEL3) and XSE...Automatic and interactive spot check of the IDC bulletins (REB, SEL3) and XSE...
Automatic and interactive spot check of the IDC bulletins (REB, SEL3) and XSE...
 
sensors.pptx
sensors.pptxsensors.pptx
sensors.pptx
 
IRJET- Clustering the Real Time Moving Object Adjacent Tracking
IRJET-  	  Clustering the Real Time Moving Object Adjacent TrackingIRJET-  	  Clustering the Real Time Moving Object Adjacent Tracking
IRJET- Clustering the Real Time Moving Object Adjacent Tracking
 
Laser guidance system for mobile robots
Laser guidance system for mobile robotsLaser guidance system for mobile robots
Laser guidance system for mobile robots
 
ramya_Motion_Detection
ramya_Motion_Detectionramya_Motion_Detection
ramya_Motion_Detection
 
Sensing
SensingSensing
Sensing
 
Fast and High-Precision 3D Tracking and Position Measurement with MEMS Microm...
Fast and High-Precision 3D Tracking and Position Measurement with MEMS Microm...Fast and High-Precision 3D Tracking and Position Measurement with MEMS Microm...
Fast and High-Precision 3D Tracking and Position Measurement with MEMS Microm...
 
1 tracking systems1
1 tracking systems11 tracking systems1
1 tracking systems1
 
A Fast Laser Motion Detection and Approaching Behavior Monitoring Method for ...
A Fast Laser Motion Detection and Approaching Behavior Monitoring Method for ...A Fast Laser Motion Detection and Approaching Behavior Monitoring Method for ...
A Fast Laser Motion Detection and Approaching Behavior Monitoring Method for ...
 
Xray interferometry
Xray interferometryXray interferometry
Xray interferometry
 

Recently uploaded

Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodJuan lago vázquez
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonAnna Loughnan Colquhoun
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...DianaGray10
 
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingRepurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingEdi Saputra
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Scriptwesley chun
 
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsMS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsNanddeep Nachan
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoffsammart93
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MIND CTI
 
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...apidays
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProduct Anonymous
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAndrey Devyatkin
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfsudhanshuwaghmare1
 
Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native ApplicationsWSO2
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businesspanagenda
 
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ..."I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...Zilliz
 
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...apidays
 
A Beginners Guide to Building a RAG App Using Open Source Milvus
A Beginners Guide to Building a RAG App Using Open Source MilvusA Beginners Guide to Building a RAG App Using Open Source Milvus
A Beginners Guide to Building a RAG App Using Open Source MilvusZilliz
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobeapidays
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CVKhem
 

Recently uploaded (20)

Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
 
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingRepurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Script
 
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsMS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectors
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
 
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native Applications
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
 
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ..."I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
 
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...
 
A Beginners Guide to Building a RAG App Using Open Source Milvus
A Beginners Guide to Building a RAG App Using Open Source MilvusA Beginners Guide to Building a RAG App Using Open Source Milvus
A Beginners Guide to Building a RAG App Using Open Source Milvus
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
 

Detection of temporary objects in mobile lidar point clouds

  • 1. Detection of Temporary Objects in Mobile Lidar Point Clouds Xinwei Fang Guorui Li Kourosh Khoshelham Sander Oude Elberink
  • 2. BACKGROUND  Mobile laser scanning provides an accurate recording of road environments useful for many applications;  Usually only permanent objects are of interest;  Temporary objects can hamper the analysis of permanent ones;  Example: change detection using multi-epoch data where temporary objects appear as (false) change signals. 2
  • 3. APPROACH Static  Temporary objects: Moving  Static temporary objects:  segmentation + classification based on shape features  Moving temporary objects:  segmentation + closest point analysis in two sensor data 3
  • 4. STATIC TEMPORARY OBJECTS  Classification based on shape features: Linear & short Linear & tall Volumetric & tall Planar Volumetric & short 4
  • 5. MOVING TEMPORARY OBJECTS  Detection based on closest point analysis with two sensor data Sensor 1 Sensor 2 5
  • 6. METHODS 1. Ground removal 2. Connected-component segmentation 3. Static temporary objects:  feature extraction + classification 4. Moving temporary objects:  closest point analysis + classification 6
  • 7. GROUND REMOVAL  Plane-based segmentation  Ground = large & low segment 7
  • 8. CONNECTED COMPONENT SEGMENTATION  Points that are closer than a certain distance (e.g. 30 cm) belong to one connected component; 8
  • 9. FEATURE EXTRACTION  Shape features Size (number of points) Area on horizontal plane Mean density Height of the lowest point Height  Contextual feature Distance to trajectory  Eigen-based features Anisotropy Planarity Sphericity Linearity 9
  • 10. CLASSIFICATION  Ground truth for training and evaluation: manual labeling (115 samples)  Feature selection  Forward Selection (FS)  Backward Elimination (BE)  Classification  Linear Discrimnant Classifier (LDC)  Support Vector Machine (SVM) 10
  • 11. CLOSEST POINT ANALYSIS Static Moving Static objects Moving objects Number 45 24 11
  • 12. EXPERIMENTS  Study area Enschede, urban  Data TopScan MLS One strip: ~20 mio points 12
  • 13. RESULTS Classifier Completeness Correctness LDC - all features 0.90 0.86 LDC - FS (8 features) 0.90 0.79 LDC - BE (8 features) 0.95 0.91 SVM - all features 1.00 0.91 SVM - FS (9 features) 1.00 1.00 SVM - BE (11 features) 1.00 0.95  Detection results for static temporary objects (test set): 13
  • 14. RESULTS  Classification results for the whole strip : 14
  • 15. RESULTS Sensor 1 Sensor 2 Sensor1 + Sensor2 Completeness 0.93 0.86 0.90 Correctness 0.90 0.96 0.93 Overall Accuracy 0.84 0.83 0.84  Detection results for moving objects:  Total 64 samples  4 false positives  6 false negatives 15
  • 16. LIMITATIONS  Occlusion;  Overgrown and undergrown segments;  Shrunk or elongated shapes due to movement.  Variable shape and size of vehicles. 16
  • 17. SUMMARY  Object-based approach: obvious choice as we are dealing with objects not points;  Connected component segmentation of objects works well (but not perfect!);  Shape features are suitable for classification of static temporary objects; Accuracy > 90%.  Distance between closest points is a useful measure for detecting moving objects; Accuracy > 80%  Occlusion: objects seen by one sensor but not the other = problem for moving objects. 17
  • 19. 19