Code of Federal Regulations (Last Updated: November 8, 2024) |
Title 15 - Commerce and Foreign Trade |
Subtitle B - Regulations Relating to Commerce and Foreign Trade |
Chapter VII - Bureau of Industry and Security, Department of Commerce |
SubChapter C - Export Administration Regulations |
Part 774 - The Commerce Control List |
Supplement No. 5 to Part 774 - Items Classified Under ECCNS 0A521, 0B521, 0C521, 0D521 and 0E521
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Supplement No. 5 to Part 774 - Items Classified Under ECCNS 0A521, 0B521, 0C521, 0D521 and 0E521
The following table lists items subject to the EAR that are not listed elsewhere in the CCL, but which the Department of Commerce, with the concurrence of the Departments of Defense and State, has identified warrant control for export or reexport because the items provide at least a significant military or intelligence advantage to the United States or for foreign policy reasons.
Item descriptor.
Note: The description must match by model number or a broader descriptor that does not necessarily need to be company specificDate of initial or
subsequent
BIS classification
(ID = initial date;
SD = subsequent date)Date when the item will be designated EAR99, unless reclassified in another ECCN or the 0Y521 classification is reissued Item-specific license
exception eligibility0A521. Systems, Equipment and Components No. 1 [Reserved] [Reserved] [Reserved] [Reserved] 0B521. Test, Inspection and Production Equipment [Reserved] 0C521. Materials No. 1 XBS Epoxy system designed to obfuscate critical technology components against x-ray and terahertz microscopy imaging attempts November 16, 2015 (ID) November 16, 2016 License Exception GOV under § 740.11(b)(2)(ii) only No. 2 [Reserved] [Reserved] [Reserved] [Reserved] 0D521. Software No. 1 Geospatial imagery “software” “specially designed” for training a Deep Convolutional Neural Network to automate the analysis of geospatial imagery and point clouds, and having all of the following:
1. Provides a graphical user interface that enables the user to identify objects (e.g., vehicles, houses, etc.) from within geospatial imagery and point clouds in order to extract positive and negative samples of an object of interest;
2. Reduces pixel variation by performing scale, color, and rotational normalization on the positive samples;
3. Trains a Deep Convolutional Neural Network to detect the object of interest from the positive and negative samples; and
4. Identifies objects in geospatial imagery using the trained Deep Convolutional Neural Network by matching the rotational pattern from the positive samples with the rotational pattern of objects in the geospatial imagery.
Technical Note: A point cloud is a collection of data points defined by a given coordinate system. A point cloud is also known as a digital surface model.January 6, 2020 (ID) January 6, 2023 License Exception GOV under § 740.11(b)(2)(ii) only. 0E521. Technology No. 1 [Reserved] [Reserved] [Reserved] [Reserved] [80 FR 70678, Nov. 16, 2015, as amended at 81 FR 52328, Aug. 8, 2016; 83 FR 14583, Apr. 5, 2018; 85 FR 461, Jan. 6, 2020; 86 FR 462, Jan. 6, 2021; 87 FR 730, Jan. 6, 2022]