Share on FacebookTweet about this on TwitterEmail this to someone
Share on FacebookTweet about this on TwitterEmail this to someone
Inset photo courtesy of NYPD/Photo courtesy of Google Maps
Inset photo courtesy of NYPD/Photo courtesy of Google Maps
Police are looking for a man who forcibly touched a woman in Jackson Heights.

Police are looking for a man who forcibly touched a woman at a Jackson Heights store last week.

On May 17, at approximately 4:27 a.m., the suspect entered a Dunkin’ Donuts store at the intersection of Roosevelt Avenue and 74th Street and approached the 46-year-old victim. He proceeded to grab her groin area over her pants and flee, officials said.

Police describe the suspect as a Hispanic male, approximately 25 to 35 years old, 5 feet 6 inches to 5 feet 10 inches and 160 to 180 pounds.

He was last seen wearing grey sweater, red tank top, brown jeans, black sneakers, a green camouflage baseball cap, and a red backpack.

Anyone with information in regards to this incident is asked to call the NYPD’s Crime Stoppers Hotline at 800-577-TIPS (8477) or for Spanish, 888-57-PISTA (74782).  The public can also submit their tips by logging onto the Crime Stoppers website or by texting their tips to 274637 (CRIMES) then enter TIP577. All calls and messages are kept confidential.

Comments:

Join The Discussion



Related Stories
Long Island man beats two transgender women outside of Jackson Heights McDonald’s
Long Island man beats two transgender women outside of Jackson Heights McDonald’s
Take a look at these pet-friendly apartments that are for sale in Queens
Take a look at these pet-friendly apartments that are for sale in Queens
Popular Stories
Inset courtesy of NYPD
UPDATE: Bayside man charged with sexually assaulting woman at a Flushing beauty salon
Photo via YouTube/MajorWorld
City accuses Queens-based car dealer Major World of predatory lending and inflating prices
Photo: Anthony Giudice/QNS
Cross Bay and Marine Parkway bridges will go cashless beginning on April 30: governor


Skip to toolbar
Web Analytics