KMCS Adaptive Leafstrip – Autumn

🛒 Produkt na zamówienie

Czas realizacji: 7–10 dni od zamówienia

Ograniczony czasowo kod zniżkowy, który wynagrodzi Ci czekanie ;)
dev-code

109,99 

Na stanie

Aktualna cena najniższa od 30 dni - szczęściarz ;)
EAN: 17568GTIN: 17568 SKU: OD-A-KM-LEAF-AUT Kategorie: ,
Załóż konto - kupując ten produkt zyskasz 109,99 punktów.
Marka:

KMCS Adaptive Leafstrip is a fantastic addition for anyone seeking optimal camouflage in various environments. These strips adapt to any terrain, making them an ideal choice for a wide range of outdoor activities, including airsoft and wildlife photography. Their easy attachment to any gear or KMCS camouflage suits facilitates their use in the field. Additionally, they are built to withstand even the harshest conditions without unnecessarily adding weight to your gear. With their realistic appearance mimicking actual leaves, they provide effective camouflage to help you remain unseen in the field.

KMCS offers its products in the following camouflage patterns:

Woodland Floor (forest floor, ideal combination of light and dark for year-round use)
Dark Forest (darker variant, more brown tones)
Green (greener variant, suitable for grassy areas and green vegetation)

KMCS – Kicking Mustang
It’s a team of enthusiastic airsoft fans who, under the leadership of James (a YouTuber known as Kicking Mustang), founded a company with the same name – Kicking Mustang.They specialize in producing airsoft camouflage clothing such as ghillie suits, viper hoods, and accessories like Boonie hats or backpack covers. With a deep understanding of the needs and preferences of the airsoft community, especially snipers, they offer camouflage products that meet the highest standards and provide absolutely perfect concealment.Their commitment to quality ensures that every purchase of products from Kicking Mustang is an investment in your satisfaction. For these reasons, their products are also seen among professional military snipers and their spotters.

 

Dostępność produktu

, ,