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1 0.433105 0.304199 0.016602 0.016602 |
2 0.500000 0.473145 0.158203 0.092773 |
3 0.411621 0.620117 0.059570 0.074219 |
4 0.497070 0.576172 0.066406 0.070312 |
5 0.381348 0.817383 0.040039 0.039062 |
6 0.577637 0.716309 0.067383 0.041992 |
7 0.354492 0.440430 0.080078 0.078125 |
8 0.387695 0.699219 0.091797 0.080078 |
9 0.458984 0.798828 0.117188 0.101562 |
10 0.630371 0.257812 0.100586 0.087891 |
11 0.482422 0.411621 0.042969 0.024414 |
12 0.649902 0.466797 0.028320 0.035156 |
13 0.706543 0.470703 0.049805 0.029297 |
14 0.561523 0.739746 0.039062 0.047852 |
15 0.466309 0.674316 0.024414 0.038086 |
16 0.707520 0.609375 0.024414 0.015625 |
17 0.564941 0.571289 0.028320 0.068359 |
18 0.439941 0.392578 0.006836 0.031250 |
19 0.568359 0.450195 0.052734 0.048828 |
20 0.652344 0.426758 0.044922 0.117188 |
21 0.647461 0.368652 0.050781 0.020508 |
22 0.630371 0.557617 0.063477 0.046875 |
23 0.505371 0.293945 0.059570 0.080078 |
24 0.340820 0.611816 0.064453 0.032227 |
25 0.615723 0.431641 0.030273 0.019531 |
26 0.671387 0.396484 0.047852 0.044922 |
27 0.796387 0.617188 0.084961 0.052734 |
28 0.367676 0.557617 0.088867 0.023438 |
29 0.481445 0.618652 0.037109 0.038086 |
30 0.367188 0.399414 0.029297 0.027344 |
31 0.756348 0.479980 0.053711 0.092773 |
0 0.422363 0.584473 0.034180 0.034180 |
1 0.394531 0.405762 0.017578 0.016602 |
2 0.319824 0.350098 0.102539 0.098633 |
3 0.448730 0.296387 0.026367 0.110352 |
4 0.246094 0.375488 0.064453 0.063477 |
5 0.274414 0.519043 0.035156 0.036133 |
6 0.315430 0.662109 0.080078 0.060547 |
7 0.597656 0.341797 0.033203 0.080078 |
8 0.734375 0.655273 0.076172 0.068359 |
9 0.206543 0.468262 0.104492 0.120117 |
10 0.538574 0.753418 0.096680 0.114258 |
11 0.551758 0.277344 0.048828 0.091797 |
12 0.537109 0.651367 0.029297 0.041016 |
13 0.266602 0.593750 0.056641 0.054688 |
14 0.589844 0.564941 0.013672 0.055664 |
15 0.702637 0.402832 0.032227 0.026367 |
16 0.582520 0.639160 0.024414 0.022461 |
17 0.244141 0.541016 0.068359 0.048828 |
18 0.479492 0.354980 0.031250 0.012695 |
19 0.495117 0.675293 0.054688 0.034180 |
20 0.597656 0.484375 0.072266 0.076172 |
21 0.399902 0.500488 0.022461 0.034180 |
22 0.663574 0.309570 0.045898 0.056641 |
23 0.725098 0.575195 0.053711 0.052734 |
24 0.625488 0.648926 0.059570 0.036133 |
25 0.350586 0.765137 0.025391 0.022461 |
26 0.441406 0.523926 0.054688 0.036133 |
27 0.577637 0.220703 0.012695 0.046875 |
28 0.623535 0.463867 0.049805 0.044922 |
29 0.332031 0.491699 0.037109 0.036133 |
30 0.683594 0.634277 0.019531 0.030273 |
31 0.389160 0.322266 0.057617 0.066406 |
0 0.575684 0.513184 0.030273 0.030273 |
1 0.568848 0.312988 0.014648 0.014648 |
2 0.501953 0.564941 0.111328 0.100586 |
3 0.346191 0.499512 0.010742 0.069336 |
4 0.727539 0.389160 0.058594 0.059570 |
5 0.613770 0.613281 0.034180 0.033203 |
6 0.530273 0.323730 0.044922 0.053711 |
7 0.633789 0.698730 0.070312 0.063477 |
8 0.501465 0.727051 0.065430 0.077148 |
9 0.462402 0.480469 0.073242 0.105469 |
10 0.422363 0.312500 0.086914 0.044922 |
11 0.461426 0.352539 0.069336 0.078125 |
12 0.541504 0.661133 0.036133 0.021484 |
13 0.380371 0.544434 0.055664 0.038086 |
14 0.660645 0.477539 0.047852 0.041016 |
15 0.551270 0.574219 0.032227 0.019531 |
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17 0.566895 0.704590 0.065430 0.034180 |
18 0.511719 0.685059 0.029297 0.012695 |
19 0.434082 0.584473 0.030273 0.045898 |
20 0.387695 0.609863 0.021484 0.026367 |
21 0.675293 0.381836 0.018555 0.033203 |
22 0.682129 0.425293 0.034180 0.043945 |
23 0.746582 0.453125 0.081055 0.062500 |
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25 0.528320 0.407715 0.025391 0.024414 |
26 0.313477 0.514648 0.035156 0.021484 |
27 0.364258 0.583008 0.080078 0.041016 |
28 0.608398 0.752441 0.017578 0.063477 |
29 0.475098 0.538086 0.016602 0.033203 |
30 0.447266 0.673340 0.027344 0.022461 |
31 0.634277 0.551270 0.051758 0.041992 |
0 0.486328 0.658203 0.031250 0.031250 |
1 0.497559 0.296387 0.014648 0.014648 |
2 0.710938 0.499023 0.089844 0.062500 |
3 0.648926 0.618652 0.053711 0.108398 |
YAML Metadata Warning:empty or missing yaml metadata in repo card
Check out the documentation for more information.
IRIS Dataset: Industrial Real-Sim Imagery Set
Overview
The IRIS Dataset is a comprehensive real-world dataset designed to study sim-to-real transfer for object detection in industrial robotic environments. This repository provides:
- The complete real IRIS dataset: 508 annotated images of 32 mechanical components captured across four distinct, challenging industrial scenes.
- Assets for synthetic data generation: All necessary 3D models, backgrounds, and materials to run the companion synthetic data generation pipeline.
- Example synthetic datasets: Two fully-annotated synthetic training sets (4000 images each) generated using our pipeline, showcasing different data generation strategies.
- Pre-trained model checkpoints: YOLO11m models trained on the provided synthetic datasets, serving as baselines for sim-to-real transfer experiments.
This release accompanies our paper and the open-source synthetic data generation code SynthRender. The goal is to provide a complete, reproducible benchmark for evaluating and advancing sim-to-real methods in industrial robotics.
Dataset Statistics
TOTAL DATA: 508 images, 32 classes
Distribution by instance count:
- 96 single object images
- 210 single instance images
- 202 double instance images
Scene Breakdown:
| Scene Type | Count | Image Range |
|---|---|---|
| Controlled lighting (room) | 101 | 000β100 |
| Window sunlight | 67 | 101β167 |
| Background diversity | 100 | 168β267 |
| Industrial robot scene | 240 | 268β507 |
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Folder Structure
IRIS
βββ Assets
β βββ CADs
β β βββ 3DGS
β β βββ Manual
β β βββ MeshyAI
β β βββ TRELLIS
β βββ General
β β βββ backgrounds
β β βββ distractors
β β βββ plane_materials
β βββ 3D_GenAI_Masked_Imgs
βββ Checkpoints
βββ Real_Test_Set
β βββ annotations
β β βββ coco
β β β βββ by_scene
β β β βββ full
β β βββ yolo
β β βββ by_scene
β β β βββ 01_control_lighting
β β β βββ 02_sunlight_window
β β β βββ 03_floor_backgrounds
β β β βββ 04_robot_scene
β β βββ full
β βββ images
β βββ by_scene
β β βββ 01_control_lighting
β β β βββ depth
β β β βββ rgb
β β βββ 02_sunlight_window
β β β βββ depth
β β β βββ rgb
β β βββ 03_floor_backgrounds
β β β βββ depth
β β β βββ rgb
β β βββ 04_robot_scene
β β βββ depth
β β βββ rgb
β βββ full
β βββ depth
β βββ rgb
βββ Synthetic_Train_Sets
βββ 4k_Material_Randomized
β βββ coco
β βββ yolo
β βββ images
β β βββ train
β β βββ val
β βββ labels
β βββ train
β βββ val
βββ 4K_Physics_Intrinsics_RGB_Exp
βββ coco
βββ yolo
βββ images
β βββ train
β βββ val
βββ labels
βββ train
βββ val
Description of Key Folders
Assets
Contains resources for synthetic data generation and running the pipeline
- CADs: 3D models of all 32 parts generated via our four methods: Manual (expert moddeling), 3DGS (3D Gaussian Splattin), MeshyAI (texture generation), and TRELLIS (GenAI 3D asset).
- General: Backgrounds, distractor objects, and plane materials for scene composition.
- 3D_GenAI_Masked_Imgs: Real object images with segmentation masks for GenAI tools.
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Real_Test_Set
Captured with a Zivid 2 Plus MR60 industrial RGB-D camera.
- annotations/: COCO and YOLO bounding-box annotations.
- images/: RGB images and depth data.
The real test set is provided in two complementary formats: a full evaluation set (images/full/ and annotations/full/) for comprehensive benchmarking across all 508 images, and per-scene organization (images/by_scene/ and annotations/by_scene/) organized into 4 distinct industrial scenarios (controlled lighting, window sunlight, background diversity, and robot-mounted views). This dual structure allows researchers to either evaluate overall performance or conduct targeted analysis of specific environmental challenges.
Synthetic_Train_Sets
Images and bounding box annotations of our two best performing configuration synthetic datasets (4000 images each):
- 4k_Material_Randomized: Manual modelled CADs with material randomization
- 4K_Physics_Intrinsics_RGB_Exp: Manual modelled CADs and textures
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Checkpoints
Pre-trained YOLO11m models of our best 2 performing synthetic datasets:
yolo11m_Material_Randomized.pt: Trained on 4k_Material_Randomized datasetyolo11m_Physics_Intrinsics_RGB_Exp.pt: Trained on 4K_Physics_Intrinsics_RGB_Exp dataset
Object Classes
|
|
| Family / Source | Object/Class Name(s) |
|---|---|
| Custom-Modeled | C_O_Ring_L, C_O_Ring_M, C_O_Ring_S |
| C_Plastic_Washer_L, C_Plastic_Washer_S | |
| C_Steel_Ball_L, C_Steel_Ball_S | |
| C_Washer_M5 | |
| C_Washer_M6 | |
| FATH GmbH | F_Roll-in_Nut_M5 |
| Festo SE & Co. KG | FestoI |
| FestoT | |
| Festo_Torch | |
| FestoV | |
| FestoX | |
| FestoY | |
| GlobalFastener Inc. | GF_Collar_L, GF_Collar_S |
| GF_Slotted_Pin_L, GF_Slotted_Pin_S | |
| GF_Split_Pin_L, GF_Split_Pin_S | |
| GF_Cone_Screw_M8 | |
| GF_Hexagon_Nut | |
| GF_Knurled_Screw_M8 | |
| GF_Plain_Screw_M8 | |
| GF_Screw_M5 | |
| McMaster-Carr Supply Co. | MM_Silencer_L, MM_Silencer_S |
| MM_Spring | |
| MM_Wing | |
| MM_Wood_Screw |
Citation
J. M. Araya-Martinez, T. Tom, A. S. Reig, P. R. Valiente, J. Lambrecht, and J. KrΓΌger, βSynthrender and iris: Open-source framework and dataset for bidirectional sim-real transfer in industrial object perception,β 2026. [Online]. Available: https://arxiv.org/abs/2602.21141
License
See LICENSE.txt for terms and conditions.
Contact
For questions, please contact the corresponding authors of the paper.
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