SHARE SLAM S100 Series

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SHARE SLAM S100 Series

Professional 3D LiDAR Scanner

SHARE SLAM S100-16

SHARE SLAM S100-32

SHARE SLAM S100-32 PRO

Complex Environments, Precise Reconstruction

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Ultra-long Range up to 300 Meters

Excellent long-distance sensing capability with a maximum measuring range of 300 meters.

It delivers detailed point clouds for both close-up details and distant structures, achieving dual improvements in scanning efficiency and model quality.

② SHARE SLAM S100-32 PRO

Ultra-High-Definition Imaging for Brilliant Point Clouds

Built-in 1-inch mechanical shutter mapping wide-angle camera, quickly capturing ultra-high-definition true-color images for accurate point cloud coloring.

The S100-32 PRO is further equipped with four 20-megapixel wide-angle cameras, paired with an independent 5nm ISP image processing platform.

It provides a wider field of view and finer texture details, replicating the real world with millimeter-level precision.

3 Hours Long Battery Life

To meet the needs of continuous data capture in ultra-large scenes, the S100 Series adopts a dual-battery redundant design.

The battery life lasts up to 3 hours, and the batteries support hot-swapping for uninterrupted operation.

Upgraded RTK for Precise Positioning

The new RTK module features an integrated professional survey antenna design, further enhancing phase center stability.

With stronger anti-interference and anti-multipath performance, more satellite tracking, it delivers more reliable centimeter-level accuracy.

Visible Laser Control Point Acquisition

The S100 Series features innovative visible laser control point acquisition.

Even in rugged scenes such as mining areas and karst caves, control points can be collected accurately and conveniently.

High-Precision LiDAR

Equipped with 16-channel or 32-channel mechanical rotating LiDAR, with a maximum point frequency of 640,000 points per second ①. Combined with SHARE's self-developed SLAM algorithm, it generates high-density, high-precision point cloud data with point cloud thickness within 5mm and relative accuracy better than 1cm.

① SHARE SLAM S100-32, SHARE SLAM S100-32 PRO

PPK Processing Supported

The device supports PPK processing mode, compatible with self-built base stations or cloud PPK. It can generate georeferenced results even in RTK-challenged areas such as mountains and deserts.

Ergonomic Backpack System

The S100 Series features an ergonomic backpack system that greatly improves operational comfort and mobility, reducing fatigue during long hours of work for easier operation.

Massive Data Management

Standard 1TB high-speed SSD meets large-scale survey storage needs. Data transfer speed exceeds 1GB/s for more efficient post-processing.

Specifications

Product Name SHARE SLAM S100-16 SHARE SLAM S100-32 SHARE SLAM S100-32 PRO
LiDAR Channels 16 32
Point Cloud Rate 320,000 pts/s 640,000 pts/s
Measuring Range 0.05 ~ 120 m 0.05 ~ 120 m 0.5 ~ 300 m
Camera Quantity 2 4
Sensor Size 1-inch (13.13×8.76mm); Pixel Size 2.4μm
Effective Pixels 16 MP 20 MP
Dimensions 386.8mm×152.7mm×174.4mm
Weight 2438g 2328g
Wi-Fi Wi-Fi 6, 2.4G/5G; 20m
Storage 1TB SSD
RTK Accuracy Horizontal 0.8cm+1ppm; Vertical 1.5cm+1ppm
Backpack System Standard Ergonomic Backpack System
Battery Capacity 49.436Wh (3400mAh) × 2
Operating Time Approx. 180 mins
Point Cloud Thickness Within 5mm
Relative Accuracy Better than 1cm
Absolute Accuracy Better than 5cm

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